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HomeMy WebLinkAbout20010127.tiff �r U.S. Department of Transportation The Urbanized Area Formula Federal Transit Administration Program and the Needs of Small Transit Intensive Cities Report to Congress /77 lir li r I1 6r ¥ {'ar r . near In tr I__ < �� 21 } ant L 41 a September 2000 do//se//A ai erid a, 2001-0127 0 U.S. Department Deputy Administrator 400 Seventh St.,S.W. * 4( } Washington,D.C.20590 of Transportation Federal Transit # s' Administration September 29, 2000 if A Dear Colleague: I am pleased to provide you with a copy of the Federal Transit Administration's (FTA) report on The Urbanized Area Formula Program and the Needs of Small Transit Intensive Cities, which we have prepared in accordance with Section 3033 of the Transportation Equity Act for the 21st Century (TEA-21). This report was approved by Secretary of Transportation Rodney E. Slater on September 29, 2000. As required under TEA-21, this report is the product of a study to determine whether the needs of small urbanized areas with unusually high levels of transit service are reflected in the Urbanized Area Formula Program established by 49 USC §5307. The study concludes that sufficient issues exist to suggest that changes to the FTA formula program should be considered as part of the next reauthorization cycle; however, the basic formula apportionments should continue to reflect underlying transit needs. If you have any questions regarding the content of this report,please do not hesitate to contact me. Sincerely, Nuria I. Fernandez Acting Administrator The Urbanized Area Formula Program and the Needs of Small Transit Intensive Cities Report to Congress September 2000 Report Number FTA-TBP10-00-04 Prepared by: Federal Transit Administration Pursuant to: Public Law 105-178, §3033 Available from: Federal Transit Administration Office of Policy Development, TBP-10 400 7th Street, SW, Room 9310 Washington, DC 20590 http://www.fta.dot.gov Cover photo courtesy of Santa Fe Trails Transit(FTA Public Transit Image Gallery) }of 1Nu�._ g�� a9tz THE SECRETARY OF TRANSPORTATION �� WASHINGTON,D.C. 20590 cps SEP 2 9 2000 The Honorable Phil Gramm Chairman,Committee on Banking, Housing,and Urban Affairs U.S. Senate Washington,D.C. 20510-6075 Dear Mr. Chairman: The enclosed report, "The Urbanized Area Formula Program and the Needs of Small Transit Transportation Equity Act Intensive Cities" completed through the Cooperative Research Program of the Transportation Research Board, is provided in accordance with Section 3033 conduct of the a study of the EganizA ed for the 21s`Century. Section 3033 requires the Secretary Area Formula Program established under Section 5307 of title 49,United States Code and the needs of small urbanized areas with unusually high levels of transit service. ng that ges to the existing The study FormulacGraants Program should be considered aslpart of theUrbanized FY 2004 and beyond Area Fo apportionments should continue to reflect reauthorization cycle. However,the formula app underlying transit needs. Please call either me or Michael Frazier, Assistant t Secretaryal lett are being s for ent ntal the fflfaaznksmg Minority ity e if you have any questions. Housing, and Urban Affairs, and the Chairman Member of g SenateCommittee mber of the Banking, 00use Committee on Transportation and Chairman and Ranking Infrastructure. Sincerely, Rodney E. later Enclosure iii A��at OF TAA.,6,4 a t THE SECRETARY OF TRANSPORTATION � et WASHINGTON, D.C. 20590 '41Es OFP SEP 2 9 2000 The Honorable Paul S. Sarbanes Ranking Minority Member Committee on Banking, Housing, and Urban Affairs U.S. Senate Washington, D.C. 20510-6075 Dear Senator Sarbanes: The enclosed report, "The Urbanized Area Formula Program and the Needs of Small Transit Intensive Cities"completed through the Cooperative Research Program of the Transportation Research Board, is provided in accordance with Section 3033 of the Transportation Equity Act for the 21st Century. Section 3033 requires the Secretary to conduct a study of the Urbanized Area Formula Program established under Section 5307 of title 49, United States Code and the needs of small urbanized areas with unusually high levels of transit service and report the results to the Committee on Transportation and Infrastructure of the House of Representatives and the Committee on Banking, Housing, and Urban Affairs of the Senate by December 31, 1999. The study concludes that sufficient issues exist suggesting that changes to the existing Urbanized Area Formula Grants Program should be considered as part of the FY 2004 and beyond reauthorization cycle. However,the formula apportionments should continue to reflect underlying transit needs. Please call either me or Michael Frazier, Assistant Secretary for Governmental Affairs, at (202) 366-4573, if you have any questions. Identical letters are being sent to the Chairman of the Senate Committee on Banking, Housing, and Urban Affairs, and the Chairman and Ranking Minority Member of the House Committee on Transportation and Infrastructure. Sincerely, Rodney E. Slater Enclosure v g as OF TggNspo9 W a THE SECRETARY OF TRANSPORTATION cs1 cif WASHINGTON, D.C. 20590 F��4h� SE P 2 c onnr The Honorable Bud Shuster Chairman, Committee on Transportation and Infrastructure U.S. House of Representatives Washington, D.C. 20515-6256 Dear Mr. Chairman: The enclosed report, "The Urbanized Area Formula Program and the Needs of Small Transit Intensive Cities"completed through the Cooperative Research Program of the Transportation Research Board, is provided in accordance with Section 3033 of the Transportation Equity Act for the 21st Century. Section 3033 requires the Secretary to conduct a study of the Urbanized Area Formula Program established under Section 5307 of title 49,United States Code and the needs of small urbanized areas with unusually high levels of transit service and report the results to the Committee on Transportation and Infrastructure of the House of Representatives and the Committee on Banking, Housing, and Urban Affairs of the Senate by December 31, 1999. The study concludes that sufficient issues exist suggesting that changes to the existing Urbanized Area Formula Grants Program should be considered as part of the FY 2004 and beyond reauthorization cycle. However,the formula apportionments should continue to reflect underlying transit needs. Please call either me or Michael Frazier,Assistant Secretary for Governmental Affairs, at (202) 366-4573, if you have any questions. Identical letters are being sent to the Chairman and Ranking Minority Member of the Senate Committee on Banking, Housing, and Urban Affairs, and the Ranking Minority Member of the House Committee on Transportation and Infrastructure. Sincerely, Rodney E. Slater Enclosure vii A��x.t OF TR4Nsg09� e THE SECRETARY OF TRANSPORTATION O z � o� WASHINGTON,D.C. 20590 !f sop O� of of SEP 2 9 2000 The Honorable James L. Oberstar Ranking Minority Member Committee on Transportation and Infrastructure U.S. House of Representatives Washington, D.C. 20515-6256 Dear Congressman Oberstar: The enclosed report, "The Urbanized Area Formula Program and the Needs of Small Transit Intensive Cities"completed through the Cooperative Research Program of the Transportation Research Board, is provided in accordance with Section 3033 of the Transportation Equity Act for the 21s`Century. Section 3033 requires the Secretary to conduct a study of the Urbanized Area Formula Program established under Section 5307 of title 49, United States Code and the needs of small urbanized areas with unusually high levels of transit service and report the results to the Committee on Transportation and Infrastructure of the House of Representatives and the Committee on Banking, Housing, and Urban Affairs of the Senate by December 31, 1999. The study concludes that sufficient issues exist suggesting that changes to the existing Urbanized Area Formula Grants Program should be considered as part of the FY 2004 and beyond reauthorization cycle. However,the formula apportionments should continue to reflect underlying transit needs. Please call either me or Michael Frazier, Assistant Secretary for Governmental Affairs, at (202) 366-4573, if you have any questions. Identical letters are being sent to the Chairman and Ranking Minority Member of the Senate Committee on Banking,Housing, and Urban Affairs, and the Chairman of the House Committee on Transportation and Infrastructure. Sincerely, / c Rodney E. Slater Enclosure ix Table of Contents 1 Introduction 1 2 The Formula Grant Programs of the Federal Transit Administration 1 2.1 Nonurbanized Area Formula Program (Section 5311) 2 2.2 Elderly and Persons with Disabilities Formula Program (Section 5310) 2 2.3 Urbanized Area Formula Program(Section 5307) 2 3 Federal Formula Grant Assistance and Local Transit Funding Needs 3 3.1 Existing Need 3 3.2 Potential Need 4 4 Small Transit Intensive Cities 5 4.1 Measures of Transit Intensity 5 Exhibit 1: Small Urbanized Areas Exceeding Large Urbanized Area Averages and Statistical Outliers 7 4.2 Funding Issues 10 5 Federal Transit Assistance for Large, Small, and Nonurbanized Areas 11 Exhibit 2: FTA Formula Apportionments by Urbanized Area Size 1998-2000 12 5.1 Small Transit Intensive Cities 13 Exhibit 3: Shares of Transit Service, Population, and Federal Funding 13 6 Analysis of Funding Alternatives 14 6.1 Applying Service Factors to Small Urbanized Area Formula Apportionments 14 6.1.1 Applying Service Factors to Small Urbanized Areas as a Group 15 6.1.2 Applying the Bus Formula to All Urbanized Areas in a Single Tier 15 Exhibit 4: Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas (Fiscal Year 2000) 16 Exhibit 5: Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas (Fiscal Year 2000) 24 6.2 Alternative Proposal: Targeting Section 5309 Bus Program Funding to Small Transit Intensive Cities 32 7 Other Issues 32 7.1 The Role of the States 32 7.1.1 The Governor's Apportionment 32 7.1.2 The Nonurbanized Area Formula Program and State Transit Assistance 33 7.2 The 2000 Census 33 7.3 Reporting Requirements 34 7.4 Small Operators in Large Urbanized Areas 34 7.5 Large Operators in Nonurbanized areas 35 8 Conclusion 35 Appendix A: Data and Methodology A-1 Exhibit A-1: Average Annual Passenger Miles per Vehicle Revenue Mile and per Vehicle Revenue Hour 1996-98 A-2 Exhibit A-2 A-3 Exhibit A-3 A-4 Exhibit A-4 A-5 Appendix B: Examples of Formula-Based State Transit Funding Programs B-1 xi Foreword Section 3033 of the Transportation Equity Act for the 21st Century (TEA-21) calls for a study of the Urbanized Area Formula Program administered by the Federal Transit Administration(FTA), focusing on the needs of small urbanized areas that provide unusually high levels of transit service. This Report to Congress fulfills that requirement. The Urbanized Area Formula Program, authorized in Section 5307 of U.S.C. 49, allocates funding for mass transit through a statutory formula, which is comprised of multiple tiers. For small urbanized areas (under 200,000 in population), funds are apportioned based on potential needs(population and population density). For large urbanized areas (over 200,000 in population), funds are apportioned based on both potential needs and existing needs (current transit service levels). While transit service in most small urbanized areas is minimal compared to larger cities, there are some"small transit intensive cities"where this is not the case. Since the formula apportionments for small urbanized areas do not depend on service levels, such cities receive smaller apportionments than they would if service levels were incorporated into the formula. Two hypothetical changes to the urbanized area formula were analyzed, both of which involved applying service factors in calculating small urbanized area formula apportionments. In the first case, small urbanized areas remained a distinct tier (as in the current formula), while in the second case bus formula funds were allocated to all urbanized areas in a single tier. As is the case with any such formula-based allocation program,there would be a significant redistribution of formula apportionments,with transit intensive cities gaining significantly. Additionally, some small urbanized areas would gain even were they forced to compete with much larger urbanized areas in the same tier. The study also analyzes a potential Federal transit funding change involving the Section 5309 Capital Investment Grants program. Other issues noted in the study include: the role of state governments, the 2000 Census of Population, and reporting requirements. The study concludes that sufficient issues exist suggesting that changes to the existing Urbanized Area Formula Grants Program should be considered as part of the FY 2004 and beyond reauthorization cycle. However, the formula apportionments should continue to reflect underlying transit needs. xiii 1 Introduction This Report to Congress fulfills the requirements of Section 3033 of the Transportation Equity Act for the 218t Century (TEA-21), which called for a study of the Urbanized Area Formula Program administered by the Federal Transit Administration (FTA), focusing on the needs of small urbanized areas that provide unusually intensive transit service. Specifically, Section 3033 directs the Secretary of Transportation to "conduct a study to determine whether the formula for apportioning funds to urbanized areas under section 5336 of title 49, United States Code, accurately reflects the transit needs of the urbanized areas and, if not, whether any changes should be made either to the formula or through some other mechanism to reflect the fact that some urbanized areas with a population between 50,000 and 200,000 have transit systems that carry more passengers per mile or hour than the average of those transit systems in urbanized areas with a population over 200,000." A Federal Register Notice announcing the study, along with a request for comments on its design, was published on July 9, 1999. Outreach sessions were held in Sacramento, CA, and Washington, DC, during that same month. Many helpful written and oral comments, received from parties interested in the study, have been incorporated into this report. The first section of this report outlines the formula grant programs administered by the Federal Transit Administration. It is followed by a discussion of the existing and potential transit needs that cities have, and how the formula factors used relate to these needs. The third section characterizes small, transit intensive cities, which are the focus of the study, and some of the funding issues that they face. The next two sections involve data analysis. The first disaggregates recent federal transit funding by urbanized area size, showing the differences among size categories in funding relative to population and service levels. The second analyzes potential changes to the formula and other funding alternatives that would result in small transit intensive cities receiving a greater share of federal funding. The study also includes a discussion of other issues related to the urbanized area formula program, many of which were raised by commenters on the study. The report concludes with the findings and recommendations of FTA regarding the Urbanized Area Formula Program. 2 The Formula Grant Programs of the Federal Transit Administration Formula Grant Programs comprise the largest assistance program administered by FTA, totaling $3.0 billion in FY 2000. The programs provide assistance to local governments and transit operators for both operating and capital expenditures. The three formula 1 programs are authorized in Sections 5307, 5310, and 5311 of 49 U.S.C., which can be briefly summarized as follows: 2.1 Nonurbanized Area Formula Program (Section 5311) The Nonurbanized Area Formula Program allocates funding to states to be used to support the operations and capital needs of transit operators serving residents outside of urbanized areas. The formula allocates funds to states based solely on their nonurbanized area population, using Census data. The Section 5311 program receives 6.37 percent of the funds available for formula programs. 2.2 Elderly and Persons with Disabilities Formula Program (Section 5310) The Elderly and Persons with Disabilities Formula Program allocates funding to states to be used to provide capital assistance (including purchase of service arrangements)to providers of specialized transit services for the elderly and disabled. The funds are allocated based on each state's population of elderly persons and persons with disabilities. The Section 5310 program receives 2.4 percent of the funds available for formula programs. 2.3 Urbanized Area Formula Program (Section 5307) The vast majority of funding for the formula programs, 91.23 percent, is dedicated for use in urbanized areas. The Urbanized Area Formula Grants Program, Section 5307 of Title 49 of the United States Code, allocates funds to urbanized areas for capital and planning costs associated with mass transit. Operating assistance is also available for urbanized areas under 200,000 in population. The actual apportionment formula for the program is found in 49 U.S.C. 5336. The formula allocates section 5307 funds through a series of hierarchical tiers. The first division establishes two separate tiers of urbanized areas: 1) 9.32% is allocated to small urbanized areas (population 50,000 to 199,999) 2) 90.68% is allocated to large urbanized areas (population 200,000 and above). For small urbanized areas, the formula apportionments are based solely on two factors: 1) population 2)population times population density For large urbanized areas, however, the formula is applied through multiple tiers: A) The Fixed Guideway Tiers (33.29%) 1) Fixed Guideway Incentive Tier(4.39%). Allocated based on: a) fixed guideway passenger miles weighted by passenger-miles per dollar of operating cost 2) Fixed Guideway Non-incentive Tier(95.61%). Allocated based on: a) fixed guideway route miles b) fixed guideway vehicle revenue miles B) The Bus Tiers (66.71%). 2 1) Bus Incentive Tier (9.2%). Allocated based on: a) bus passenger miles weighted by passenger-miles per dollar of operating cost 2) Bus Non-incentive Tier(90.8). This portion of the bus tier is segmented between urbanized areas above and below 1 million in population. Allocated based on: a) population b)population times population density c)bus vehicle revenue miles In sum, funding is allocated to urbanized areas under 200,000 solely on the basis of population and population density, while funding for areas over 200,000 includes factors related to the level of transit service provided. There are two other important distinctions between small and large urbanized areas in the formula program. The first lies in the method of apportioning funds to the urbanized areas. In large urbanized areas, formula funds are apportioned directly to the urbanized area,through a designated recipient agency within the urbanized area. In small urbanized areas that are not in a transportation management area,however, formula funds attributable to the area are apportioned to the governor, who acts as the designated recipient for all of the small urbanized areas within the state. The governor may allocate these funds without FTA input or involvement. The second distinction between large and small urbanized areas is that formula funds for small urbanized areas may be used for operating costs, while this option is no longer available to larger urbanized areas since the passage of TEA-21. 3 Federal Formula Grant Assistance and Local Transit Funding Needs The purpose of using a formula to allocate federal assistance for transit is to ensure that such funds are distributed in a fair, objective, and equitable manner. Fundamentally, this means that the formula should allocate more funds to areas that have proportionally greater transit needs. The factors used in the formula are intended to reflect these underlyinw needs while retaining some degree of simplicity and ease of measurement and reporting. The formula is also intended to encourage cost effectiveness in the provision of transit services. In understanding how the formula reflects these needs, it is important to understand the difference between two kinds of need: potential need and existing need. 3.1 Existing Need Urbanized areas within the United States vary considerably in their levels of mass transit service provision and usage, ranging from large systems utilizing multiple rail and non- rail modes,to simple bus and/or demand response systems,to no public transit service ' It should be noted that no explicit needs assessment is made in allocating formula funding among urbanized areas. Instead,the formula factors used can be viewed as surrogates for the basic transit needs of local communities. 3 whatsoever. Areas that provide a high level of transit service will naturally have greater needs for both operating assistance(to make up for the gap between passenger fares and operating costs) and capital funding (to replace and rehabilitate vehicles, guideways, and support structures which deteriorate from use). Areas with high levels of vehicle utilization by transit passengers will have needs to expand their systems to relieve crowding and excessive wear and tear on their transit vehicles. High levels of existing transit service also typically reflect a local commitment to transit through both funding and land use planning, as well as local geographic and demographic factors. Federal assistance in this case can be seen as reinforcing such local commitment. Formula factors intended to reflect existing needs include route mileage and vehicle revenue miles (service provision) and passenger miles (service consumption)? 3.2 Potential Need Urbanized areas also vary widely in their potential for mass transit usage. Larger cities tend to have more urban travel, some of which could be best served by mass transit. Cities with more compact land use have greater potential for effective and efficient public transit service as residential and activity locations are more concentrated, making mass transit an effective alternative to the private automobile. Federal assistance in such instances can be seen as helping local governments to tap into such potential needs. Many urbanized areas, particularly those that have grown rapidly in recent decades, lack a strong post-war local tradition of transit service. Federal assistance helps such areas to build and sustain a minimal transit service level, enabling them to build local support of and for mass transit to achieve the potential transit service that could be sustained in such areas. Many local governments also find that local funding sources for transit are limited by constitutional or legal factors, thereby increasing their reliance on federal assistance. Such potential transit needs are reflected in the formula by population and population density factors. 2 One frequently expressed concern regarding needs-based federal subsidy programs is that they may encourage inefficiency in the provision of local public services. For example, it has often been argued that the inclusion of service provision factors in the formula encourages local transit operators to inefficiently run transit vehicles regardless of ridership. There are several ways in which this issue can be addressed. First,under TEA-21,operators in large urbanized areas(whose formula allocations are based in part on service levels)are no longer eligible for federal operating assistance,which had been declining in real terms for several years. Since the funds can only be used for capital and preventive maintenance expenditures,their effect on operations is limited. Second,the formula includes a so-called incentive tier, in which transit service consumption(passenger miles)is weighted by the average operating cost per passenger mile. This provides an incentive for efficient service provision, since an operator that provides service at a lower average operating cost can receive more federal capital assistance. Finally,it can be argued that a high level of transit service provision is a worthy public policy goal in its own right. High- frequency service,even in off-peak hours,provides a significant quality of life benefit to those who are dependent on public transit for their mobility needs. High frequency,reliable transit service also provides an incentive for efficient,transit-supportive land use. For these reasons,the socially optimal level of transit service provision may be higher than would be dictated by a strict economic efficiency calculation, and this is reflected in the formula's use of service level factors. 4 4 Small Transit Intensive Cities The typical transit system serving a small urbanized area generally has somewhat different characteristics from those serving larger urbanized areas. In small cities, the focus is generally on providing basic mobility for residents, especially those whose access to auto transportation is limited by age, income, or disability. Modes provided are limited to bus and/or demand response services operating at relatively low frequency. Such low volume systems often have a significant need for operating assistance to pay for the costs of running the system. By contrast, mass transit in large cities will often play additional roles in providing relief from traffic congestion and encouraging efficient land use patterns. Schedule frequencies are high, and bus systems may be supplemented by high capacity,high-speed rail systems. The greatest funding needs are generally on the capital side, as transit systems need to replace large,heavily utilized vehicle fleets and fund service expansions as the urbanized area grows. As with any such generalization, however,there are some small cities that differ significantly from such norms. Such cities provide a level of transit service far greater than their size and density characteristics would typically suggest. In fact, some of these so-called"small transit intensive cities" operate more vehicles and carry more riders than do other cities with much larger populations. These cities generally share one or both of the following characteristics: • Special Populations. Many small transit intensive cities have special characteristics that encourage high transit usage. One example is college and university towns. The campus provides a high volume activity center for the community, and nearby parking may be limited. College students generally have below-average auto ownership and tend to live in high density housing. Such factors contribute to a higher level of transit usage than would be typically seen in a community of its size. Similar factors contribute to high transit usage in other small cities with special populations, such as resort destinations. • High Levels of State and Local Transit Funding. States and local governments vary widely in their commitments to providing public funding for mass transit. In areas where mass transit is seen as a priority, capital and operating assistance from state and local governments may allow a transit operator to provide much more service than is typically provided in other small urbanized areas without such funding. 4.1 Measures of Transit Intensity The language of Section 3033 of TEA-21 and the discussion above imply that small transit intensive cities should have certain measurable transit system characteristics. In order to understand just how extensive the issue of small transit intensive cities is, measures of transit service intensity were computed for transit operators in urbanized areas for the period 1996-98. The computed measures of transit service intensity can be grouped into four categories: 5 1) Vehicle Utilization Transit intensive cities have transit systems with vehicles that are heavily utilized by the public. Measures of vehicle utilization include passenger miles per vehicle revenue mile and passenger miles per vehicle revenue hour. These measures are noted in the language of Section 3033 of TEA-21, which also makes reference to transit vehicle utilization levels in small urbanized areas that exceed the averages for such use by urbanized areas over 200,000 in population. 2) Service Provision Transit intensive cities provide a high level of transit service to their citizenry. This can be measured by vehicle revenue miles per capita or vehicle revenue hours per capita. There are several small cities that can be classified as transit intensive by these measures. 3) Service Consumption Transit intensive cities have a high rate of service consumption by their populations. This can be measured by passenger miles traveled per capita or unlinked passenger trips per capita. 4) Statistical Outliers Transit intensive cities have service levels that are significantly greater than would be predicted given the urbanized area's population and population density. In the language of statistical modeling, such cities would be called "outliers." In the context of the above discussion of need,these are cities whose existing needs (reflected by service levels) are not captured by their potential needs (reflected by population and population density). For purposes of measurement, small transit intensive cities were defined as small urbanized areas whose intensity measure exceed the average for larger urbanized areas (population between 200,000 and 1,000,000). Such a definition is in keeping with the language of Section 3033. Statistical outliers were defined as small urbanized areas with substantially greater service provision(vehicle revenue miles) and service consumption (passenger miles) than would be expected given their size and density, as determined by a regression analysis. Exhibit 1 lists the small urbanized areas that can be classified as transit intensive by one or more of the above criteria. 6 Exhibit 1 Small Transit Intensive Cities Small Urbanized Areas Exceeding Large Urbanized Area Averages and Statistical Outliers PMT per PMT per VRM per VRH Per PMT per PAX per Statistical Statistical Urbanized Area VRM VRH Capita Capita Capita Capita Outlier: VRM Outlier: PMT Bremerton,WA x x x : : .. x , x' x . . . = x x Eugene-Spnhgfield OR . x ;.x x x' x: . x x. Rtehiand-Kennewick-Pasco,WA x x x x xii x ' x LT x Santa Cr ,CA x x x x x '" x = x x Champaign-Urbana, ILNiiii, ix , :x - :. ; x x , r ::::iii F4!!::::, x .. X'Eh '. Santa Barbara, CA x , x x x . x x x Seaside-Monterey, CA x x x x x x x Brockton, MA x x x x x x Laredo, TX x x x x x x Olympia, WA x x x x x x Bellingt am,WA x• x, x x x Boulder nO xgD xil'll x x x Oayis, A x x f x x: x Florettte,'SJiiii iiii x x .,.01J " x . Palm5 ,CA : x . ., . x . .. x. x x Santa Rosa, CA x x x x x I Winston-Salem, NC x x x x x I Iowa City, IA x x x x Ithaca, NY x x x x New Bedford, MA x x x x Binghamtton N'( ;. x x x . Brownsville TX. :°': x.x - x Duluth,MN Wi ' , : .' x x x Fayettevil�Springdale AEA x x x ' : Fitchburg-Leominster;MA .' x x x . Gainesville, FL x x x Galveston, TX x x x Hyannis, MA x x x Lancaster-Palmdale, CA x x x . Lubbock. TX x x x Exhibit 1 Small Transit Intensive Cities Small Urbanized Areas Exceeding Large Urbanized Area Averages and Statistical Outliers PMT per PMT per VRM per VRH Per PMT per PAX per Statistical Statistical Urbanized Area VRM VRH Capita Capita Capita Capita Outlier: VRM Outlier: PMT Monessen, PA x x X' . Oshkosh,SNI: x x x Santa Fe NM '. x x x Savannah, GA x x x St. Cloud, MN x x x State College, PA x x x Tallahassee, FL x x x Taunton, MA x x x $ay City MI x x Beaurt t Tat k f x inf x x Qharlestott,\N x x GtnWat4Y7.101114171,7aqiTA711 allgier5V,IT\54R4E. Erie, PA x x Jackson, MI x x Johnstown, PA x x Lafayette, LA x x Lafayette-West Lafayette, IN x x Lancaster,,i'A x x Monroe,t_A. ft x Muncie;IN x x Myrtle Beach SC. . x x ` Newark, Okl x ' �t Newport, RI x x Pittsfield, MA x x Racine, WI x x Redding, CA x x Sheboygan, WI x x Exhibit 1 Small Transit Intensive Cities Small Urbanized Areas Exceeding Large Urbanized Area Averages and Statistical Outliers PMT per PMT per VRM per VRH Per PMT per PAX per Statistical Statistical Urbanized Area VRM VRH Capita Capita Capita Capita Outlier: VRM Outlier: PMT Stamford,CT-NY x x Sumter;SC Vero Beach,FL x x Charlottesville,VA x Deftona El "` . Dover, DE x Eau Claire. WI x Kailua, HI x La Crosse, WI-MN x Logan, UT x New London-Norwich,CT x Norwalk, x Portland ME x Poughkeepsie, NY x r Springfield,IL ' ._ x ` Williamsport PA X York, PA X Note: urbanized areas are sorted b the number ca in h rte n e of categories which they qualify as transit intensive by9 Y PMT passenger miles traveled VRM vehicle revenue miles VRH: vehicle revenue hours PAX: unlinked passenger trips There are several important caveats in interpreting these measures. The most important concerns the area served by the transit operators based in each small city. Many transit operators in small urbanized areas also serve populations outside the primary urbanized area, either in other urbanized areas or in nonurbanized areas. Unlike transit operators serving large urbanized areas (over 200,000 in population),however,these transit operators are not required to break out their formula-related operating statistics (passenger miles and vehicle revenue miles) by urbanized area. Population figures, however, are for the primary urbanized area alone. Thus, the per capita intensity measures may be slightly inflated by service provided outside of the primary urbanized area. See Appendix A for more detail on the data and methodology used in these calculations. 4.2 Funding Issues As currently constituted, the urbanized area formula for small urbanized areas includes demographic factors (population and population density) but not service factors (vehicle revenue miles, passenger miles, operating costs), as does the bus formula for large urbanized areas. In the context of the earlier discussion on needs, this means that the funding formula for small urbanized areas reflects potential needs but not existing needs. Small transit intensive cities, however, are precisely those that do offer high levels of transit service relative to their size. Thus, transit systems in such cities receive less federal formula funding than they would if the formula also used service levels. According to commenters on this study,however, such systems were in the past often able to make use of other sources of federal transit funding whose availability has diminished in recent years. Among these sources were: 1) Discretionary Capital Grants Because of their nature and the issues facing them, small transit intensive cities were often strong candidates for receiving discretionary funds through the Section 5309 Capital Investment Grants program. Increased congressional earmarking of these funds in recent years, however, has substantially reduced the availability of these funds on a discretionary basis. 2) Unused Governor's Apportionment In some states,transit operators in small transit intensive cities were able to make use of portions of the Section 5307 Governor's Apportionment that would otherwise be unused. The two sources of this unused portion were the operating assistance cap and cities without transit service. a) The operating assistance cap Prior to TEA-21, urbanized area formula funds could be used for either operating or capital expenditures, subject to a cap on the amount that could be used for 10 operating assistance in each urbanized area.3 Many transit operators, especially in small cities, had funding needs that were primarily on the operations side, rather than capital needs. As a result, they were unable to use the full amount of the formula funding attributable to their particular area, and the "excess" was made available for reallocation to transit operators in other areas with capital needs. Many small transit intensive cities were able to obtain additional capital funding in this way. TEA-21, however, gave full flexibility to small urbanized areas on how formula funds could be allocated to capital or operating use. As a result, small urbanized areas with operating assistance needs are able to devote their full allocation to operations, and the excess is no longer available for redistribution. b) Unserved urbanized areas In some large states, there are small urbanized areas which do not have any transit service that is eligible for Section 5307 funding. Such states are able to redistribute the portion of the Governor's Apportionment attributable to such areas among cities that do have transit service. As more small urbanized areas initiate service, however, these unallocated funds are reduced.4 The result of these reductions in available funding sources has left operators in small transit intensive cities with more limited resources for capital needs even as they face pressures from their communities and customers to expand and improve existing service. 5 Federal Transit Assistance for Large, Small, and Nonurbanized Areas The Urbanized Area Formula Program, with its multiple tiers and formula factors, does not allocate funds on a strict per capita basis. The allocations are also targeted to urbanized areas, though the states do play a role in the allocations to urbanized areas under 200,000, as discussed above. This often raises questions about the shares of federal funding received by urbanized areas of different sizes. As discussed in the previous section, small transit intensive cities receive less formula funding relative to their service levels than do other small urbanized areas. More generally, however, how does funding for small urbanized areas compare to funding for large urbanized areas and to nonurbanized areas? Exhibit 2 shows total FTA formula apportionments by urbanized area size for 1998-2000, including both the Section 5307 (Urbanized) and 5311 (Nonurbanized)programs. The majority of FTA formula funding is clearly targeted to transit operators in major urbanized areas (population over 1 million), who receive approximately two-thirds of 3 While the operating assistance cap was only phased out under TEA-21, it had been raised in the years just prior such that the cap was rarely binding for small urbanized areas. Thus,this avenue of additional funding was primarily available in the more distant past(ca. 1995 and earlier). 4 Between 1996 and 1998,the number of small urbanized areas with a transit system reporting operational data increased from 196 to 206(out of 281 total urbanized areas between 50,000 and 200,000 in population). 11 total formula funds. Other large urbanized areas (200,000-1 million), small urbanized areas (50,000-200,000), and nonurbanized areas (under 50,000)receive decreasingly smaller shares by population size. Exhibit 2 also compares these funding levels relative to population and transit service levels.5 In FY 2000, major urbanized areas received $21.27 per person in formula assistance, while small urbanized areas received $9.95 per person and nonurbanized areas just$2.09 per person. This great disparity in per capita funding, however, reflects the substantially greater transit service provision and usage in larger cities. On a service level basis, larger urbanized areas receive relatively less funding than do small urbanized areas. Exhibit 2 FTA Formula Apportionments by Urbanized Area Size 1998-2000 Section 530/ Section 5311 Fiscal Uver 200,000- 50,000- Year 1 million 1 million 200,000 Under 50,000 Total Number of urbanized areas 34 91 281 n/a 406 I otal Apportionments 1998 1,692 386 226 135 2,438 (millions of$) 1999 1,869 428 244 178 2,718 2000 2,026 469 268 193 2,956 Dollars Per capita (1990 Census) 1998 1/./6 10.10 8.3/ 1.46 9.65 1999 19.62 11.19 9.05 1.93 10.76 2000 21.27 12.28 9.95 2.09 11.71 1998 0.048 0.152 0.233 0.059 Passenger Mile 1999 0.051 0.152 0.244 0.063 2000 0.054 0.161 0.268 0.066 Unlinked Passenger Trip 1998 0.253 0.603 0.957 0.305 1999 0.266 0.625 1.018 0.342 2000 0.282 0.676 1.081 1.039 0.364 Vehicle Revenue Mile 1998 0.774 1.010 1.239 0.886 1999 0.832 1.029 1.277 0.953 2000 0.875 1.050 1.295 0.995 Major urbanized area apportionments in 2000 amounted to 87.5 cents per vehicle revenue mile, 28.2 cents per passenger trip, and 5.4 cents per passenger mile, while small urbanized area apportionments were $1.30 per vehicle revenue mile, $1.08 per passenger trip, and 26.8 cents per passenger mile. Nonurbanized areas received slightly less per passenger ($1.04) than do small urbanized areas. For each size category, however, formula funding increased between 1998 and 2000, both in absolute dollar amounts and relative to population and service levels. 5 The service level data used in each fiscal year's formula apportionments are derived from data in the reporting year two years prior. The funding ratios reported in Exhibit 2 are calculated in the same way. Thus, FY 2000 apportionments use 1998 data,FY 1999 uses 1997 data,and so on. 12 5.1 Small Transit Intensive Cities Small urbanized areas as a group, then, receive a relatively large share of federal transit funding compared to their service levels, but do relatively poorly on a per capita basis. The issue for small transit intensive cities, however, is that they are not like other small cities, as they provide more transit service and carry more passengers than even much larger cities. How well do these cities do relative to other small urbanized areas and to urbanized areas in general in the distribution of federal funding? In order to examine this issue, it is useful to look at funding from both the Section 5307 program and the Section 5309 Capital Program. The latter program is another significant source of federal transit funding. For example, in FY 2000, funding for Section 5307 programs totaled $2.77 billion, while Section 5309 funding totaled $2.50 billion. While most of these funds are designated for fixed guideway system modernization and expansion, a significant portion is available for bus capital needs. Section 5309 Bus program funds are available for use in both urbanized and nonurbanized areas. Could this be an additional source of funding for small transit intensive cities?7 Exhibit 3 compares data for 20 small transit intensive cities to totals for small urbanized areas and for all urbanized areas based on population and density levels, transit service levels, and Federal Formula and Capital funding levels.8 Small urbanized areas as a group were also compared to urbanized areas as a whole on the same basis. Section 5309 data were tabulated using program obligations for the period 1995-99.9 Exhibit 3 Small Transit Intensive Cities Shares of Transit Service, Population, and Federal Funding 20 Small Transit Intensive Cities Small Urbanized Areas Share among small Share among all Share among all urbanized urbanized areas urbanized areas areas Population 9.0% 1.5% 16.8% Population x Density 11.4% 1.2% 10.5% Bus Vehicle Revenue Miles 1996-98 26.5% 2.7% 10.3% Bus Passenger Miles 1996-98 39.3% 2.3% 5.8% Section 5307 Urbanized Area Formula Program Bus Apportionments 10.2% 1.2% 12.3% Section 5309 Bus Program Obligations 1995-99 23.6% 4.2% 17.7% In FY 2000, funds for the Section 5309 Bus program totaled$540 million. Section 5307 funding allocated to small urbanized areas and through the bus tiers totaled$1.93 billion. One of the comments submitted to this study,as noted above,was that increased earmarking of the Capital Program has reduced the availability of these funds to systems in small transit intensive cities. 8 The 20 cities examined were those that could be classified as transit intensive by at least 4 of the 8 criteria presented in Exhibit I. 9 These tabulations used data from the annual Statistical Summaries of FTA's Grant Assistance Programs. Since appropriations under the Section 5309 program are generally less frequent and consistent than are formula program appropriations, a longer time frame was used in looking at capital program funding. Also note that obligations were used,rather than apportionments as in Exhibit 2.This is the only level at which capital program funding can be linked to particular urbanized areas. 13 The 20 small transit intensive cities represented 9 percent of the total population in small urbanized areas. Their share of the population x density factor used in the urbanized area formula is slightly higher, reflecting the greater average density of these cities. The net effect is that these 20 cities received 10.2 percent of Section 5307 funding for small urbanized areas in recent years.10 Such cities have a much larger share of transit service in small urbanized areas, however, befitting their designation as transit intensive. The 20 cities had some 27 percent of vehicle revenue miles and 39 percent of passenger miles in small urbanized areas in 1996-98. The small transit intensive cities received just under 24 percent of capital program funding in 1995-99. Thus, the 20 cities' share of capital funding is much closer to their share of transit service supply and consumption, though it is still slightly lower. When compared to all urbanized areas, however, the small transit intensive cities do relatively well in receiving capital program funds. Their 4.2 percent share of capital program funding is well above both their population share (1.5 percent) and vehicle revenue mile and passenger mile shares (2.7 percent and 2.3 percent, respectively). This is due to the relative funding levels of small urbanized areas in general, whose share of capital program funding was close to their population share but well above their service level shares. This naturally raises the next question: what would be the result if formula funding for small urbanized areas were to be allocated in the same way as funding for large urbanized areas? 6 Analysis of Funding Alternatives This section addresses the mandate in Section 3033 of TEA-21 to examine the effects of changes in the Section 5336 funding formulas or other funding mechanisms that would assist small transit intensive cities. Two categories of funding changes are addressed. The first illustrates how formula funding for each small urbanized area would be altered if the formula included service factors for small urbanized areas as well as large urbanized areas. The second, originating from members of the transit industry, briefly describes how the Section 5309 Bus program could be used to steer more funding toward small transit intensive cities 6.1 Applying Service Factors to Small Urbanized Area Formula Apportionments In order to assess the effects of applying service factors to formula apportionments for small urbanized areas, two alternative scenarios for the FY 2000 apportionments were generated. In the first scenario, service factors were applied to small urbanized areas as a separate tier(9.32 percent of the total for Section 5307 funds). In the second, all urbanized areas were grouped together in a single Bus tier, and the formula was applied across the board. The service factors used were those from the current Bus incentive and Bus non-incentive tiers used in the large urbanized area apportionments. 0 Funding shares for the formula program, based on decennial census data,do not change year-to-year,nor does the small urbanized area share of the overall program,which is fixed in statute. 14 The same data caveats discussed above in the section on Small Transit Intensive Cities apply here. The data reported by operators in small urbanized areas may include service provided in nonurbanized areas and/or in other urbanized areas, thereby inflating the formula apportionments attributed to that urbanized area relative to what they would actually receive if the data were reported in the same way as it is for large urbanized areas. See Appendix A for more detail on the data and methodology used in this section. 6.1.1 Applying Service Factors to Small Urbanized Areas as a Group Exhibit 4 shows the net effect on each small urbanized area's FY 2000 formula apportionment of applying service factors to small urbanized areas in their own tier. The urbanized areas are grouped and their apportionments totaled by state, as in FTA's annual funding notice.t t As expected,urbanized areas with very high transit service levels would gain considerably under such an approach, while densely populated small urbanized areas with no currently reported transit service would see large decreases in Section 5307 funding. The 20 small transit intensive cities identified in the previous section would see their combined share of formula funding double, from $26.2 million to $52.4 million, and their share of formula funding among all small urbanized areas would rise from 10.17 percent to 20.34 percent. 6.1.2 Applying the Bus Formula to All Urbanized Areas in a Single Tier Exhibit 5 shows what the effect on small urbanized areas would be if the current bus formula were applied to all urbanized areas as a single tier. As a group, small urbanized areas would receive $33.5 million less in formula funding under this scenario than they actually did.12 However, most small transit intensive cities would still gain, even when competing in the same pool as larger urbanized areas. Of the 20 small transit intensive cities, 17 would increase their funding levels, and their combined total would rise from $26.2 million to $41.1 million. Their overall share of bus formula money would rise from 1.4 percent to 2.1 percent. 11 The state totals are the actual apportionments made by FTA to the governors. The actual formula funding allocated to each small urbanized area may or may not equal the totals listed here.Any minor differences between the amounts calculated here and those reported in the apportionments notice are due to rounding. 12 Major urbanized areas over 1 million would gain$74.8 million,while urbanized areas between 200,000 and 1 million in population would lose$41.4 million. Incidentally,every major urbanized area would gain, while every other large urbanized area would lose. This is due to the current two-tier structure in the Bus Non-Incentive tier. 15 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change NATIONAL TOTAL 257,568,903 257,568,903 0 ALABAMA 3,354,691 4,985,155 (1,630,464) Anniston, AL 218,307 480,853 (262,546) Auburn-Opelika, AL 291,347 385,788 (94,441) Decatur, AL 199,897 440,303 (240,405) Dothan, AL 167,898 369,820 (201,922) Florence, AL 494,014 515,217 (21,202) Gadsden, AL 206,736 455,365 (248,629) Huntsville, AL 1,169,629 1,445,530 (275,900) Tuscaloosa, AL 606,861 892,280 (285,419) ARIZONA 592,422 1,304,894 (712,472) Flagstaff, AZ 233,060 513,348 (280,288) Yuma, AZ-CA 359,362 791,546 (432,184) ARKANSAS 1,604,002 1,904,687 (300,685) Fayetteville-Springdale, AR 848,732 525,660 323,072 Fort Smith, AR-OK 324,867 715,567 (390,700) Pine Bluff, AR 348,730 483,565 (134,835) Texarkana, TX-AR 81,672 179,895 (98,223) CALIFORNIA 31,281,969 29,175,483 2,106,486 Antioch-Pittsburg, CA 1,856,434 1,649,944 206,491 Chico, CA 625,881 720,399 (94,519) Davis, CA 830,122 874,519 (44,397) Fairfield, CA 1,046,979 1,062,135 (15,156) Hemet-San Jacinto, CA 684,022 886,135 (202,113) Hesperia-Apple Valley-Victorville, CA 1,385,386 1,130,450 254,937 Indio-Coachella, CA 243,263 535,822 (292,559) Lancaster-Palmdale, CA 2,636,271 1,901,446 734,825 Lodi, CA 587,388 744,407 (157,019) Lompoc, CA 352,387 457,181 (104,794) Merced, CA 924,025 812,779 111,246 Napa, CA 859,999 849,265 10,734 Palm Springs, CA 1,707,974 1,058,042 649,931 Redding, CA 805,995 611,778 194,217 Salinas, CA 730,898 1,609,906 (879,009) San Luis Obispo, CA 346,127 762,395 (416,267) Santa Barbara, CA 2,955,688 2,490,601 465,087 Santa Cruz, CA 3,047,659 1,287,861 1,759,797 Santa Maria, CA 767,764 1,171,709 (403,945) Santa Rosa, CA 2,860,126 2,271,814 588,312 Seaside-Monterey, CA 2,746,924 1,526,612 1,220,312 Simi Valley, CA 908,637 1,445,047 (536,410) Vacaville, CA 398,271 877,250 (478,978) Visalia, CA 999,547 1,002,011 (2,464) Watsonville, CA 250,620 552,025 (301,406) Yuba City, CA 722,159 880,815 (158,656) Yuma, AZ-CA 1,424 3,136 (1,712) COLORADO 5,863,988 5,375,868 488,119 16 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Boulder, CO 2,370,193 1,196,211 1,173,982 Fort Collins, CO 1,074,973 996,330 78,643 Grand Junction, CO 334,554 567,271 (232,717) Greeley, CO 644,783 796,881 (152,098) Longmont, CO 565,624 726,189 (160,565) Pueblo, CO 873,861 1,092,986 (219,125) CONNECTICUT 8,007,269 9,503,988 (1,496,719) Bristol, CT 384,683 847,319 (462,636) Danbury, CT-NY 1,068,398 920,575 147,823 New Britain, CT 1,171,424 1,586,597 (415,173) New London-Norwich, CT 952,359 1,276,746 (324,387) Norwalk, CT 1,214,664 1,094,124 120,540 Stamford, CT-NY 1,818,012 1,946,476 (128,464) Waterbury, CT 1,397,729 1,832,150 (434,421) DELAWARE 1,407,634 405,570 1,002,064 Dover, DE 1,407,634 405,570 1,002,064 FLORIDA 11,562,698 12,360,873 (798,174) Deltona, FL 802,387 410,994 391,392 Fort Pierce, FL 851,569 984,528 (132,959) Fort Walton Beach, FL 743,596 954,371 (210,775) Gainesville, FL 1,583,890 1,223,088 360,803 Kissimmee, FL 258,633 569,676 (311,043) Lakeland, FL 1,426,388 1,250,368 176,021 Naples, FL 373,602 822,912 (449,310) Ocala, FL 250,966 552,788 (301,822) Panama City, FL 818,009 829,583 (11,575) Punta Gorda, FL 246,294 542,498 (296,204) Spring Hill, FL 188,279 414,710 (226,432) Stuart, FL 485,708 723,599 (237,892) Tallahassee, FL 1,822,037 1,394,259 427,779 Titusville, FL 699,885 399,118 300,768 Vero Beach, FL 656,013 505,468 150,545 Winter Haven, FL 355,442 782,912 (427,470) GEORGIA 5,179,441 5,411,902 (232,461) Albany, GA 665,701 670,332 (4,631) Athens, GA 659,845 642,694 17,151 Brunswick, GA 167,911 369,849 (201,937) Macon, GA 545,466 1,201,466 (656,000) Rome, GA 469,321 377,040 92,281 Savannah, GA 2,408,544 1,571,991 836,553 Warner Robins, GA 262,653 578,530 (315,878) HAWAII 877,059 1,438,341 (561,282) Kailua, HI 877,059 1,438,341 (561,282) IDAHO 2,393,797 2,846,734 (452,937) Boise City, ID 1,419,704 1,741,957 (322,253) Idaho Falls, ID 518,536 624,457 (105,922) Pocatello, ID 455,557 480,320 (24,763) 17 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change ILLINOIS 12,104,205 13,039,476 (935,271) Alton, IL 585,451 704,693 (119,241) Aurora, IL 1,533,358 1,973,637 (440,279) Beloit, WI-IL 31,794 90,065 (58,271) Bloomington-Normal, IL 944,290 1,135,262 (190,971) Champaign-Urbana, IL 2,653,060 1,602,075 1,050,985 Crystal Lake, IL 560,415 643,251 (82,837) Decatur, IL 911,724 901,814 9,911 Dubuque, IA-IL 7,348 21,007 (13,659) Elgin, IL 1,329,144 1,423,686 (94,542) Joliet, IL 1,507,617 1,646,194 (138,576) Kankakee, IL 293,322 646,084 (352,762) Round Lake Beach-McHenry, IL-WI 433,832 937,528 (503,697) Springfield, IL 1,312,849 1,314,182 (1,333) INDIANA 6,643,730 7,605,189 (961,458) Anderson, IN 529,543 614,716 (85,172) Bloomington, IN 837,852 917,307 (79,455) Elkhart-Goshen, IN 632,459 919,374 (286,915) Evansville, IN-KY 1,455,235 1,703,133 (247,897) Kokomo, IN 416,787 619,041 (202,253) Lafayette-West Lafayette, IN 1,324,812 1,230,688 94,124 Muncie, IN 990,064 904,711 85,353 Terre Haute, IN 456,977 696,219 (239,242) IOWA 4,519,207 4,140,176 379,031 Cedar Rapids, IA 1,282,505 1,286,628 (4,124) Dubuque, IA-IL 491,323 626,250 (134,927) Iowa City, IA 1,154,257 741,322 412,935 Sioux City, IA-NE-SD 780,937 684,686 96,251 Waterloo-Cedar Falls, IA 810,185 801,290 8,895 KANSAS 1,579,657 2,010,184 (430,527) Lawrence, KS 345,592 761,215 (415,623) St. Joseph, MO-KS 2,932 6,283 (3,352) Topeka, KS 1,231,134 1,242,686 (11,552) KENTUCKY 644,639 1,584,354 (939,714) Clarksville, TN-KY 82,047 193,324 (111,277) Evansville, IN-KY 85,578 237,396 (151,819) Huntington-Ashland, WV-KY-OH 168,193 473,409 (305,216) Owensboro, KY 308,822 680,224 (371,402) LOUISIANA 3,276,131 4,692,211 (1,416,080) Alexandria, LA 310,866 684,727 (373,861) Houma, LA 349,357 481,636 (132,279) Lafayette, LA 1,022,620 1,184,744 (162,124) Lake Charles, LA 432,065 951,685 (519,620) Monroe, LA 941,254 904,907 36,348 Slidell, LA 219,969 484,512 (264,544) MAINE 2,073,569 2,042,135 31,434 Bangor, ME 467,074 419,625 47,449 18 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Lewiston-Auburn, ME 519,615 487,597 32,018 Portland, ME 1,044,968 1,042,595 2,373 Portsmouth-Dover-Rochester, NH-ME 41,913 92,319 (50,406) MARYLAND 1,934,727 2,270,953 (336,226) 644,025 739,653 (95,627) Annapolis, MD 178,598 393,388 (214,790) Cumberland, MD-WV Frederick, MD 603,453 533,696 69,757 Hagerstown, MD-PA-WV 508,650 604,217 (95,566) MASSACHUSETTS 11,403,157 8,994,013 2,409,144 Brockton, MA 2,301,973 1,642,939 659,034 Fall River, MA-RI 727,489 1,602,399 (874,910) Fitchburg-Leominster, MA 1,483,937 649,363 834,574 1,454,279 463,715 990,564 Hyannis, MA Lowell, MA-NH 1,610,026 2,033,701 (423,674) New Bedford, MA 2,225,034 1,762,301 462,733 Pittsfield, MA 648,106 419,770 228,337 Taunton, MA 952,312 419,826 532,486 MICHIGAN 8,149,957 7,675,132 474,825 Battle Creek, MI 642,104 641,018 1,086 Bay City, MI 1,017,267 716,120 301,147 442,267 517,989 (75,721) Benton Harbor, MI 146,881 Holland, MI 434,467 581,348 (146,881) Jackson, MI 852,131 715,727 136,404 Kalamazoo, MI 1,585,035 1,545,579 39,456 Muskegon, MI 783,814 942,740 (158,925) Port Huron, MI 1,167,648 620,436 547,213 1,225,223 1,394,176 (168,954) Saginaw, MI 3,723,057 2,735,192 987,865 MINNESOTA Duluth, MN-WI 1,445,535 665,591 779,944 379,042 384,849 (5,807) Fargo-Moorhead, ND-MN 52,332 Grand Forks, ND-MN 32,014 84,346 (52,332) La Crosse, WI-MN 20,122 41,318 (21,196) Rochester, MN 818,168 750,719 67,449 St. Cloud, MN 1,028,176 808,369 219,807 MISSISSIPPI 1,880,791 2,348,218 (467,427) Biloxi-Gulfport, MS 1,474,748 1,453,849 20,898 Hattiesburg, MS 205,717 453,122 (247,405) Pascagoula, MS 200,326 441,246 (240,921) MISSOURI 2,828,404 3,235,877 (407,472) Columbia, MO 636,218 638,845 (2,627) Joplin, MO 203,685 448,646 (244,961) Springfield, MO 1,325,931 1,507,106 (181,175) St. Joseph, MO-KS 662,571 641,280 21,291 MONTANA 2,021,774 2,154,127 (132,353) 835,475 830,760 4,715 Billings, MT 608,975 774,700 (165,725) Great Falls, MT Missoula, MT 577,324 548,667 28,657 19 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change NEBRASKA 2,057,165 2,394,728 (337,563) Lincoln, NE 2,008,105 2,291,136 (283,031) Sioux City, IA-NE-SD 49,060 103,592 (54,532) NEW HAMPSHIRE 1,828,101 2,908,063 (1,079,962) Lowell, MA-NH 2,136 5,952 (3,816) Manchester, NH 825,478 1,219,106 (393,628) Nashua, NH 678,999 974,879 (295,881) Portsmouth-Dover-Rochester, NH-ME 321,489 708,126 (386,637) NEW JERSEY 1,234,989 2,203,395 (968,406) Atlantic City, NJ 721,016 1,588,141 (867,125) Vineland-Millville, NJ 513,973 615,253 (101,281) NEW MEXICO 1,978,437 1,199,868 778,569 Las Cruces, NM 604,795 666,532 (61,737) Santa Fe, NM 1,373,642 533,336 840,306 NEW YORK 7,901,715 6,657,248 1,244,467 Binghamton, NY 2,078,234 1,670,995 407,240 Danbury, CT-NY 11,776 22,649 (10,873) Elmira, NY 1,069,007 686,164 382,844 Glens Falls, NY 394,749 471,864 (77,115) Ithaca, NY 937,735 476,242 461,493 Newburgh, NY 280,760 618,415 (337,654) Poughkeepsie, NY 1,778,461 1,299,062 479,398 Stamford, CT-NY 65 154 (88) Utica-Rome, NY 1,350,928 1,411,704 (60,776) NORTH CAROLINA 8,278,666 10,807,410 (2,528,744) Asheville, NC 820,315 834,195 (13,880) Burlington, NC 274,732 605,137 (330,405) Gastonia, NC 402,274 886,065 (483,792) Goldsboro, NC 208,910 460,155 (251,245) Greensboro, NC 1,626,658 1,905,751 (279,093) Greenville, NC 240,538 529,819 (289,281) Hickory, NC 229,407 505,301 (275,895) High Point, NC 718,025 852,125 (134,100) Jacksonville, NC 373,503 822,694 (449,191) Kannapolis, NC 269,637 593,914 (324,277) Rocky Mount, NC 215,542 474,762 (259,220) Wilmington, NC 661,649 776,539 (114,890) Winston-Salem, NC 2,237,474 1,560,950 676,524 NORTH DAKOTA 1,918,091 2,099,862 (181,771) Bismarck, ND 614,104 605,512 8,592 Fargo-Moorhead, ND-MN 748,295 875,725 (127,430) Grand Forks, ND-MN 555,693 618,625 (62,933) OHIO 3,782,328 5,773,647 (1,991,319) Hamilton, OH 541,786 1,193,362 (651,576) Huntington-Ashland, WV-KY-OH 107,968 303,894 (195,926) Lima, OH 296,103 652,210 (356,107) Mansfield, OH 454,936 629,684 (174,748) 20 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Middletown, OH 502,173 820,501 (318,328) Newark, OH 930,126 499,922 430,205 Parkersburg, WV-OH 33,608 74,027 (40,419) Sharon, PA-OH 22,162 48,815 (26,653) Springfield, OH 625,315 949,098 (323,782) Steubenville-Weirton, OH-WV-PA 155,018 341,450 (186,432) Wheeling, WV-OH 113,131 260,685 (147,553) OKLAHOMA 407,981 898,637 (490,656) Fort Smith, AR-OK 7,157 15,765 (8,608) Lawton, OK 400,824 882,872 (482,048) OREGON 8,637,188 4,686,368 3,950,820 Eugene-Springfield, OR 3,876,315 2,205,976 1,670,339 Longview, WA-OR 6,157 14,671 (8,513) Medford, OR 752,181 681,748 70,432 Salem, OR 4,002,535 1,783,973 2,218,562 PENNSYLVANIA 12,080,092 12,250,999 (170,907) Altoona, PA 732,346 836,913 (104,567) Erie, PA 2,217,067 2,152,942 64,126 Hagerstown, MD-PA-WV 2,789 7,375 (4,586) Johnstown, PA 833,239 771,765 61,474 Lancaster, PA 2,424,434 1,946,538 477,896 Monessen, PA 556,968 529,730 27,238 Pottstown, PA 228,219 502,685 (274,466) Reading, PA 1,987,855 2,272,243 (284,388) Sharon, PA-OH 159,775 351,927 (192,152) State College, PA 807,264 732,444 74,821 Steubenville-Weirton, OH-WV-PA 1,161 2,558 (1,397) Williamsport, PA 653,053 613,984 39,068 York, PA 1,475,921 1,529,894 (53,973) PUERTO RICO 5,138,068 11,317,331 (6,179,263) Aguadilla, PR 449,512 990,114 (540,602) Arecibo, PR 420,013 925,138 (505,125) Caguas, PR 1,099,953 2,422,805 (1,322,851) Cayey, PR 325,215 716,333 (391,118) Humacao, PR 281,468 619,973 (338,505) Mayaguez, PR 604,733 1,332,011 (727,278) Ponce, PR 1,345,712 2,964,123 (1,618,411) Vega Baja-Manati, PR 611,463 1,346,835 (735,372) RHODE ISLAND 1,091,321 720,380 370,941 Fall River, MA-RI 74,974 165,142 (90,167) Newport, RI 1,016,347 555,238 461,108 SOUTH CAROLINA 8,699,091 3,050,730 5,648,360 Anderson, SC 186,276 410,299 (224,023) Florence, SC 5,146,960 422,024 4,724,936 Myrtle Beach, SC 897,760 442,572 455,189 Rock Hill, SC 213,342 469,916 (256,574) Spartanburg, SC 976,122 819,167 156,955 21 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Sumter, SC 1,278,631 486,753 791,878 SOUTH DAKOTA 1,431,949 1,514,777 (82,828) Rapid City, SD 409,742 482,434 (72,692) Sioux City, IA-NE-SD 6,406 13,526 (7,120) Sioux Falls, SD 1,015,801 1,018,817 (3,016) TENNESSEE 2,054,001 2,344,390 (290,389) Bristol, TN-VA 99,485 219,130 (119,645) Clarksville, TN-KY 598,115 534,276 63,839 Jackson, TN 502,278 404,396 97,882 Johnson City, TN 486,941 616,431 (129,490) Kingsport, TN-VA 367,182 570,156 (202,974) TEXAS 17,578,506 21,706,887 (4,128,381) Abilene, TX 721,458 770,125 (48,668) Amarillo, TX 1,171,848 1,428,410 (256,562) Beaumont, TX 899,448 982,435 (82,988) Brownsville, TX 1,719,833 1,427,936 291,897 Bryan-College Station, TX 795,863 956,487 (160,624) Denton, TX 419,047 516,668 (97,621) Galveston, TX 1,274,300 548,067 726,233 Harlingen, TX 318,614 701,792 (383,178) Killeen, TX 609,420 1,342,335 (732,915) Laredo, TX 2,035,609 1,695,320 340,289 Lewisville, TX 270,788 596,449 (325,661) Longview, TX 266,421 586,831 (320,410) Lubbock, TX 2,188,053 1,671,261 516,792 Midland, TX 332,447 732,263 (399,816) Odessa, TX 368,805 812,346 (443,541) Port Arthur, TX 576,470 886,146 (309,676) San Angelo, TX 578,940 761,463 (182,523) Sherman-Denison, TX 396,590 381,161 15,428 Temple, TX 230,790 432,724 (201,934) Texarkana, TX-AR 158,525 349,174 (190,649) Texas City, TX 421,389 928,170 (506,781) Tyler, TX 329,514 725,803 (396,288) Victoria, TX 228,427 503,143 (274,716) Waco, TX 868,991 1,096,112 (227,122) Wichita Falls, TX 396,917 874,266 (477,349) UTAH 451,290 433,852 17,437 Logan, UT 451,290 433,852 17,437 VERMONT 901,040 761,283 139,757 Burlington, VT 901,040 761,283 139,757 VIRGINIA 4,693,084 5,053,356 (360,272) Bristol, TN-VA 70,826 156,005 (85,179) Charlottesville, VA 793,373 726,621 66,751 Danville, VA 352,849 412,634 (59,785) Fredericksburg, VA 219,937 484,443 (264,506) Kingsport, TN-VA 8,375 29,453 (21,078) 22 Exhibit 4 Net Effect of Applying Service Factors to the Formula Apportionments to Small Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change 956,042 691,272 264,770 Pynehburg, VA 615,938 876,343 (260,405) Petersburg, VA Roanoke, VA 1,675,744 1,676,586 (841 WASHINGTON 14,574,520 4,775,509 9,799,011 1,455,456 562,649 892,807 Bellingham, WA 3,812,767 1,089,956 2,722,811 oew, WA-ORA 447,525 476,091 (28,567) Longview, 2,901,230 847,994 2,053,236 Olympia, WA 5,136,908 884,646 4,252,262 Richland-Kennewick-Pasco, WA Yakima, WA 820,636 914,174 (93,538) WEST VIRGINIA 4,307,496 3,670,219 637,276 Charleston, WV 2,280,135 1,476,469 803,667 8,017 17,659 (9,642) Cumberland,own MD-WV 1,686 4,460 (2,773) Hagerstown, MD-PA-WV 151,875 Huntington-Ashland, WV-KY-OH 980,822 828,947 Parkersburg, WV-OH 242,036 533,119 (291,083) Steubenville-Weirton, OH-WV-PA 104,135 229,371 (125,237) Wheeling, WV-OH 690,664 580,194 110,470 WISCONSIN 10,949,318 10,047,371 901,947 Appleton-Neenah, WI 1,790,317 1,839,851 (49,534) Beloit, WI-IL 344,889 394,376 (49,487) Duluth, MN-WI 149,187 172,747 (23,560) 912,945 720,646 192,299 Gre WI 1,556,183 1,397,379 158,804 Ganesn Bay WI 488,892 530,354 (41,462) Janesville,WI 1,081,177 965,672 115,505 LKenCrosse,osha, 846,549 766,631 79,918 Oshkosh, WI-MN 824,996 669,054 155,942 ine, WI 1,636,895 1,491,481 145,414 Racine, 117 559 (442) Round Lake Beach-McHenry, IL-WI 720,394 630,370 90,024 Sheboygan, W I 596,777 468,252 128,525 Wausau, WI 686,493 1,051,862 (365,369) WWYOMING 219,062 482,515 (263,453) Casper,en e, 467,431 569,347 (101,915) Cheyenne, WY 23 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change NATIONAL TOTAL 224,094,365 257,568,903 (33,474,539) ALABAMA 3,302,676 4,985,155 (1,682,479) Anniston, AL 241,872 480,853 (238,980) Auburn-Opelika, AL 287,779 385,788 (98,009) Decatur, AL 222,634 440,303 (217,668) Dothan, AL 192,653 369,820 (177,167) Florence, AL 445,640 515,217 (69,576) Gadsden, AL 236,274 455,365 (219,091) Huntsville, AL 1,094,397 1,445,530 (351,133) Tuscaloosa, AL 581,425 892,280 (310,854) ARIZONA 594,348 1,304,894 (710,546) Flagstaff, AZ 238,462 513,348 (274,885) Yuma, AZ-CA 355,885 791,546 (435,661) ARKANSAS 1,489,233 1,904,687 (415,454) Fayetteville-Springdale, AR 713,758 525,660 188,098 Fort Smith, AR-OK 350,805 715,567 (364,762) Pine Bluff, AR 337,608 483,565 (145,958) Texarkana, TX-AR 87,061 179,895 (92,833) CALIFORNIA 26,236,874 29,175,483 (2,938,609) Antioch-Pittsburg, CA 1,595,060 1,649,944 (54,884) Chico, CA 548,297 720,399 (172,102) Davis, CA 670,923 874,519 (203,596) Fairfield, CA 910,179 1,062,135 (151,956) Hemet-San Jacinto, CA 623,549 886,135 (262,586) Hesperia-Apple Valley-Victorville, CA 1,235,915 1,130,450 105,466 Indio-Coachella, CA 249,255 535,822 (286,566) Lancaster-Palmdale, CA 1,956,797 1,901,446 55,351 Lodi, CA 518,960 744,407 (225,447) Lompoc, CA 332,185 457,181 (124,996) Merced, CA 792,845 812,779 (19,933) Napa, CA 737,573 849,265 (111,692) Palm Springs, CA 1,483,252 1,058,042 425,210 Redding, CA 717,720 611,778 105,942 Salinas, CA 701,913 1,609,906 (907,993) San Luis Obispo, CA 324,686 762,395 (437,708) Santa Barbara, CA 2,320,887 2,490,601 (169,714) Santa Cruz, CA 2,368,295 1,287,861 1,080,434 Santa Maria, CA 697,134 1,171,709 (474,575) Santa Rosa, CA 2,313,565 2,271,814 41,751 Seaside-Monterey, CA 2,168,202 1,526,612 641,590 Simi Valley, CA 848,836 1,445,047 (596,211) Vacaville, CA 387,502 877,250 (489,748) Visalia, CA 837,610 1,002,011 (164,401) Watsonville, CA 250,322 552,025 (301,703) Yuba City, CA 644,000 880,815 (236,814) Yuma, AZ-CA 1,410 3,136 (1,726) COLORADO 5,003,870 5,375,868 (371,998) 24 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Boulder, CO 1,866,909 1,196,211 670,697 934,816 996,330 (61,514) Goa Collins, CO 336,943 567,271 (230,328) Greed Junction, CO Greeley, CO 578,978 796,881 ( ) 498,862 726,189 (227,327) Pueblo,Longmont, CO 787,362 1,092,986 (305,624) CONN ECT C1ICUT 7,071,024 9,503,988 (2,432,964) ONN 398,031 847,319 (449,288) Bristol,Danbury,C 952,666 920,575 32,091 wBriCtain, CT 1,043,615 1,586,597 (542,983) New ond CT 444,679 New London-Norwich, CT 832,067 1,276,746 ( ) 1,056,926 1,094,124 (37,198) Norwalk, CT 1,524,242 1,946,476 (422,234) Stamford, CT-NY Waterbur CT 1263476 1832,150 (568,674) DELAWARE 1,161,619 405,570 756,050 1,161,619 405,570 756,050 Dover, DE 10,435,544 12,360,873 (1,925,329) FLORIDA 670,407 410,994 259,412 Fortt Pierce,e e,L 801,261 984,528 (183,267) For 700,344 954,371 (254,027) Fort Walton B Beach, FL 129,692 Gainesville, FL 1,352,780 1,223,088 Kissimmee, FL 260,768 569,676 (308,908) 1,248,331 1,250,368 (2,037) Lakeland, FL Oc391,238 822,912 (431,674) Ocalaala,, FL 267,526 552,788 (285,262) 751,046 829,583 (78,537) Panama G rCda, FL 262,846 542,498 (279,651) Puntarn Gorda, FL 201,760 414,710 (212,951) Spring Hill,F FL 465,273 723,599 (258,326) Stuart,allah ss 1,556,908 1,394,259 162,650 TTallahassee,FL FL 552,244 399,118 153,126 Veus Be h, 583,983 505,468 78,515 Vero Beach, FL Winter Haven, FL 742,007 368 829 782,912 (414,084) GEORGIA 4,669,895 5,411,902 ( ) Albany, GA 606,942 670,332 (63,391) Athens, GA 589,112 642,694 (53,582) Brunswick, GA 183,642 369,849 (186,207) Macon, GA 562,815 1,201,466 (638,651) 407,355 377,040 30,315 Rome, GA 2,050,426 1,571,991 478,435 Savannah, GA Warner Robins, GA 269,603 578,530 (308,928)656,363 HAWAII 781,977 1,438,341 (656,363) Kailua, HI 781,977 1,438,341 (656,363) IDAHO 2,137,971 2,846,734 (708,763) B1,271,620 1,741,957 (470,336) Idaho City, ID 466,709 624,457 (157,749) Pocahotello, llo, ID 399,642 399,642 480,320 (80,678) Pocatello, ID 25 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change ILLINOIS 10,536,649 13,039,476 (2,502,827) Alton, IL 540,425 704,693 (164,268) Aurora, IL 1,375,048 1,973,637 (598,589) Beloit, WI-IL 29,668 90,065 (60,398) Bloomington-Normal, IL 832,715 1,135,262 (302,547) Champaign-Urbana, IL 2,046,267 1,602,075 444,193 Crystal Lake, IL 514,791 643,251 (128,460) Decatur, IL 803,172 901,814 (98,642) Dubuque, IA-IL 6,686 21,007 (14,321) Elgin, IL 1,135,785 1,423,686 (287,901) Joliet, IL 1,348,649 1,646,194 (297,544) Kankakee, IL 292,529 646,084 (353,555) Round Lake Beach-McHenry, IL-WI 457,458 937,528 (480,071) Springfield, IL 1,153,457 1,314,182 (160,724) INDIANA 5,928,933 7,605,189 (1,676,256) Anderson, IN 493,486 614,716 (121,229) Bloomington, IN 722,107 917,307 (195,200) Elkhart-Goshen, IN 600,053 919,374 (319,321) Evansville, IN-KY 1,314,484 1,703,133 (388,649) Kokomo, IN 387,437 619,041 (231,604) Lafayette-West Lafayette, IN 1,109,569 1,230,688 (121,120) Muncie, IN 862,306 904,711 (42,405) Terre Haute, IN 439,491 696,219 (256,728) IOWA 3,957,922 4,140,176 (182,255) Cedar Rapids, IA 1,130,674 1,286,628 (155,954) Dubuque, IA-IL 447,073 626,250 (179,177) Iowa City, IA 958,584 741,322 217,262 Sioux City, IA-NE-SD 681,425 684,686 (3,261) Waterloo-Cedar Falls, IA 740,165 801,290 (61,125) KANSAS 1,430,882 2,010,184 (579,302) Lawrence, KS 339,996 761,215 (421,219) St. Joseph, MO-KS 2,639 6,283 (3,644) Topeka, KS 1,088,248 1,242,686 (154,438) KENTUCKY 612,210 1,584,354 (972,143) Clarksville, TN-KY 74,908 193,324 (118,416) Evansville, IN-KY 77,300 237,396 (160,096) Huntington-Ashland, WV-KY-OH 154,260 473,409 (319,149) Owensboro, KY 305,742 680,224 (374,482) LOUISIANA 3,074,657 4,692,211 (1,617,554) Alexandria, LA 333,177 684,727 (351,550) Houma, LA 339,755 481,636 (141,881) Lafayette, LA 900,453 1,184,744 (284,291) Lake Charles, LA 462,602 951,685 (489,082) Monroe, LA 809,808 904,907 (95,098) Slidell, LA 228,862 484,512 (255,650) MAINE 1,896,483 2,042,135 (145,652) Bangor, ME 419,897 419,625 273 26 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Lewiston-Auburn, ME 482,392 487,597 (5,206) Portland, ME 947,579 1,042,595 (95,015) Portsmouth-Dover-Rochester, NH-ME 46,615 92,319 (45,704) MARYLAND 1,770,380 2,270,953 (500,573) Annapolis, MD 575,526 739,653 (164,127) Cumberland, MD-WV 194,367 393,388 (199,021) Frederick, MD 530,708 533,696 (2,988) Hagerstown, MD-PA-WV 469,779 604,217 (134,438) MASSACHUSETTS 9,564,431 8,994,013 570,418 Brockton, MA 1,868,264 1,642,939 225,325 Fall River, MA-RI 708,024 1,602,399 (894,375) Fitchburg-Leominster, MA 1,188,633 649,363 539,270 Hyannis, MA 1,208,581 463,715 744,867 Lowell, MA-NH 1,447,875 2,033,701 (585,826) New Bedford, MA 1,846,068 1,762,301 83,767 Pittsfield, MA 561,566 419,770 141,796 Taunton, MA 735,420 419,826 315,594 MICHIGAN 7,222,306 7,675,132 (452,826) Battle Creek, MI 577,897 641,018 (63,122) Bay City, MI 875,082 716,120 158,961 Benton Harbor, MI 407,579 517,989 (110,410) Holland, MI 406,809 581,348 (174,538) Jackson, MI 748,770 715,727 33,044 Kalamazoo, MI 1,401,875 1,545,579 (143,704) Muskegon. MI 721,859 942,740 (220,881) Port Huron, MI 981,502 620,436 361,067 Saginaw, MI 1,100,933 1,394,176 (293,243) MINNESOTA 3,177,205 2,735,192 442,013 Duluth, MN-WI 1,229,893 665,591 564,302 Fargo-Moorhead, ND-MN 339,619 384,849 (45,230) Grand Forks, ND-MN 27,975 84,346 (56,371) La Crosse, WI-MN 17,559 41,318 (23,758) Rochester, MN 699,425 750,719 (51,294) St. Cloud, MN 862,733 808,369 54,364 MISSISSIPPI 1,773,300 2,348,218 (574,918) Biloxi-Gulfport, MS 1,331,179 1,453,849 (122,670) Hattiesburg, MS 223,379 453,122 (229,743) Pascagoula, MS 218,742 441,246 (222,505) MISSOURI 2,588,766 3,235,877 (647,110) Columbia, MO 571,535 638,845 (67,310) Joplin, MO 222,233 448,646 (226,413) Springfield, MO 1,198,588 1,507,106 (308,518) St. Joseph, MO-KS 596,410 641,280 (44,869) MONTANA 1,801,671 2,154,127 (352,456) Billings, MT 741,591 830,760 (89,169) Great Falls, MT 544,972 774,700 (229,728) Missoula, MT 515,107 548,667 (33,559) 27 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change NEBRASKA 1,789,391 2,394,728 (605,337) Lincoln, NE 1,746,583 2,291,136 (544,553) Sioux City, IA-NE-SD 42,809 103,592 (60,784) NEW HAMPSHIRE 1,750,025 2,908,063 (1,158,038) Lowell, MA-NH 1,921 5,952 (4,031) Manchester, NH 761,294 1,219,106 (457,812) Nashua, NH 629,253 974,879 (345,626) Portsmouth-Dover-Rochester, NH-ME 357,557 708,126 (350,568) NEW JERSEY 1,243,427 2,203,395 (959,968) Atlantic City, NJ 742,749 1,588,141 (845,393) Vineland-Millville, NJ 500,678 615,253 (114,575) NEW MEXICO 1,697,177 1,199,868 497,309 Las Cruces, NM 551,022 666,532 (115,510) Santa Fe, NM 1,146,155 533,336 612,818 NEW YORK 6,752,114 6,657,248 94,867 1,761,932 1,670,995 90,937 Binghamton, NY 12 149) Danbury, CT-NY 10,500 22,649 Elmira, NY 902,639 686,164 216,476 Glens Falls, NY 362,575 471,864 (109,289) Ithaca, NY 770,414 476,242 294,172 Newburgh, NY 294,711 618,415 (323,704) Poughkeepsie, NY 1,444,411 1,299,062 145,348 Stamford, CT-NY 55 154 (99) Utica-Rome, NY 1,204,877 1,411,704 (206,826) NORTH CAROLINA 7,695,187 10,807,410 (3,112,222) Asheville, NC 738,390 834,195 (95,805) Burlington, NC 292,463 605,137 (312,674) Gastonia, NC 433,536 886,065 (452,529) Goldsboro, NC 226,384 460,155 (233,771) Greensboro, NC 1,471,609 1,905,751 (434,143) Greenville, NC 246,945 529,819 (282,873) Hickory, NC 252,438 505,301 (252,863) High Point, NC 663,196 852,125 (188,930) Jacksonville, NC 398,240 822,694 (424,454) Kannapolis, NC 292,637 593,914 (301,278) Rocky Mount, NC 222,092 474,762 (252,671) Wilmington, NC 610,595 776,539 (165,944) Winston-Salem, NC 1,846,663 1,560,950 285,713 NORTH DAKOTA 1,708,434 2,099,862 (391,428) Bismarck, ND 552,387 605,512 (53,125) Fargo-Moorhead, ND-MN 670,467 875,725 (205,258) Grand Forks, ND-MN 485,580 618,625 (133,046) OHIO 3,565,567 5,773,647 (2,208,080) Hamilton, OH 548,523 1,193,362 (644,839) Huntington-Ashland, WV-KY-OH 99,023 303,894 (204,870) Lima, OH 303,816 652,210 (348,394) Mansfield, OH 434,539 629,684 (195,144) 28 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Middletown, OH 492,519 820,501 (327,982) Newark, OH 783,166 499,922 283,244 Parkersburg, WV-OH 33,838 74,027 (40,189) Sharon, PA-OH 24,061 48,815 (24,755) Springfield, OH 580,361 949,098 (368,736) Steubenville-Weirton, OH-WV-PA 164,387 341,450 (177,063) Wheeling, WV-OH 101,333 260,685 (159,352) OKLAHOMA 418,732 898,637 (479,905) Fort Smith, AR-OK 7,729 15,765 (8,036) Lawton, OK 411,004 882,872 (471,869) OREGON 6,413,731 4,686,368 1,727,363 Eugene-Springfield, OR 3,064,163 2,205,976 858,188 Longview, WA-OR 5,538 14,671 (9,133) Medford, OR 662,366 681,748 (19,382) Salem, OR 2,681,663 1,783,973 897,690 PENNSYLVANIA 10,466,545 12,250,999 (1,784,454) Altoona, PA 647,789 836,913 (189,125) Erie, PA 1,899,904 2,152,942 (253,038) Hagerstown, MD-PA-WV 2,576 7,375 (4,800) Johnstown, PA 733,811 771,765 (37,954) Lancaster, PA 2,050,373 1,946,538 103,836 Monessen, PA 443,076 529,730 (86,655) Pottstown, PA 234,654 502,685 (268,031) Reading, PA 1,738,763 2,272,243 (533,480) Sharon, PA-OH 173,462 351,927 (178,464) State College, PA 684,901 732,444 (47,543) Steubenville-Weirton, OH-WV-PA 1,232 2,558 (1,327) Williamsport, PA 556,904 613,984 (57,080) York, PA 1,299,100 1,529,894 (230,794) PUERTO RICO 4,980,089 11,317,331 (6,337,242) Aguadilla, PR 456,905 990,114 (533,209) Arecibo, PR 422,429 925,138 (502,708) Caguas, PR 1,063,443 2,422,805 (1,359,361) Cayey, PR 311,871 716,333 (404,462) Humacao, PR 280,566 619,973 (339,407) Mayaguez, PR 590,708 1,332,011 (741,303) Ponce, PR 1,256,749 2,964,123 (1,707,375) Vega Baja-Manati, PR 597,418 1,346,835 (749,417) RHODE ISLAND 906,375 720,380 185,995 Fall River, MA-RI 72,968 165,142 (92,173) Newport, RI 833,407 555,238 278,169 SOUTH CAROLINA 6,858,771 3,050,730 3,808,041 Anderson, SC 200,621 410,299 (209,678) Florence, SC 3,777,982 422,024 3,355,958 Myrtle Beach, SC 762,364 442,572 319,792 Rock Hill, SC 228,385 469,916 (241,531) Spartanburg, SC 838,823 819,167 19,656 29 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Sumter, SC 1,050,596 486,753 563,843 SOUTH DAKOTA 1,287,869 1,514,777 (226,908) Rapid City, SD 382,833 482,434 (99,601) Sioux City, IA-NE-SD 5,590 13,526 (7,937) Sioux Falls, SD 899,447 1,018,817 (119,370) TENNESSEE 1,933,398 2,344,390 (410,992) Bristol, TN-VA 109,865 219,130 (109,265) Clarksville, TN-KY 546,075 534,276 11,799 Jackson, TN 433,820 404,396 29,423 Johnson City, TN 466,541 616,431 (149,890) Kingsport, TN-VA 377,098 570,156 (193,059) TEXAS 15,829,515 21,706,887 (5,877,372) Abilene, TX 668,644 770,125 (101,481) Amarillo, TX 1,068,776 1,428,410 (359,634) Beaumont, TX 806,323 982,435 (176,113) Brownsville, TX 1,267,628 1,427,936 (160,307) Bryan-College Station, TX 736,736 956,487 (219,751) Denton, TX 394,886 516,668 (121,782) Galveston, TX 1,043,675 548,067 495,608 Harlingen, TX 332,484 701,792 (369,308) Killeen, TX 621,876 1,342,335 (720,458) Laredo, TX 1,608,028 1,695,320 (87,292) Lewisville, TX 294,825 596,449 (301,624) Longview, TX 288,316 586,831 (298,515) Lubbock, TX 1,775,529 1,671,261 104,268 Midland, TX 356,335 732,263 (375,928) Odessa, TX 407,130 812,346 (405,216) Port Arthur, TX 563,896 886,146 (322,249) San Angelo, TX 540,909 761,463 (220,554) Sherman-Denison, TX 365,882 381,161 (15,279) Temple, TX 242,139 432,724 (190,585) Texarkana, TX-AR 168,985 349,174 (180,188) Texas City, TX 463,479 928,170 (464,691) Tyler, TX 341,497 725,803 (384,306) Victoria, TX 236,601 503,143 (266,541) Waco, TX 822,417 1,096,112 (273,695) Wichita Falls, TX 412,516 874,266 (461,750) UTAH 395,733 433,852 (38,120) Logan, UT 395,733 433,852 (38,120) VERMONT 772,354 761,283 11,071 Burlington, VT 772,354 761,283 11,071 VIRGINIA 4,200,348 5,053,356 (853,008) Bristol, TN-VA 78,216 156,005 (77,789) Charlottesville, VA 687,986 726,621 (38,635) Danville, VA 334,089 412,634 (78,545) Fredericksburg, VA 231,519 484,443 (252,924) Kingsport, TN-VA 8,601 29,453 (20,852) 30 Exhibit 5 Net Effect on the Formula Apportionments to Small Urbanized Areas of Applying the Bus Formula Uniformly to All Urbanized Areas Fiscal Year 2000 Hypothetical Actual Urbanized Area/State Apportionment Apportionment Net Change Lynchburg, VA 810,248 691,272 118,976 Petersburg, VA 586,038 876,343 (290,305) Roanoke, VA 1,463,651 1,676,586 (212,935) WASHINGTON 11,221,115 4,775,509 6,445,605 Bellingham, WA 1,179,683 562,649 617,034 Bremerton, WA 2,919,290 1,089,956 1,829,334 Longview, WA-OR 402,520 476,091 (73,571) Olympia, WA 2,326,804 847,994 1,478,810 Richland-Kennewick-Pasco, WA 3,657,357 884,646 2,772,711 Yakima, WA 735,461 914,174 (178,713) WEST VIRGINIA 3,803,412 3,670,219 133,193 Charleston, WV 1,920,805 1,476,469 444,336 Cumberland. MD-WV 8,725 17,659 (8,934) Hagerstown, MD-PA-WV 1,558 4,460 (2,902) Huntington-Ashland, WV-KY-OH 899,569 828,947 70,622 Parkersburg, WV-OH 243,694 533,119 (289,426) Steubenville-Weirton, OH-WV-PA 110,428 229,371 (118,943) Wheeling, WV-OH 618,634 580,194 38,440 WISCONSIN 9,525,971 10,047,371 (521,400) Appleton-Neenah, WI 1,557,842 1,839,851 (282,009) Beloit, WI-IL 321,820 394,376 (72,556) Duluth, MN-WI 126,932 172,747 (45,815) Eau Claire, WI 784,179 720,646 63,533 Green Bay, WI 1,384,368 1,397,379 (13,011) Janesville, WI 435,425 530,354 (94,929) Kenosha, WI 927,590 965,672 (38,082) La Crosse, WI-MN 738,754 766,631 (27,877) Oshkosh, WI 701,164 669,054 32,110 Racine, WI 1,405,684 1,491,481 (85,797) Round Lake Beach-McHenry, IL-WI 124 559 (435) Sheboygan, WI 626,345 630,370 (4,025) Wausau, WI 515,745 468,252 47,493 WYOMING 658,257 1,051,862 (393,605) Casper, WY 226,276 482,515 (256,239) Cheyenne, WY 431,981 569,347 (137,365) 31 6.2 Alternative Proposal: Targeting Section 5309 Bus Program Funding to Small Transit Intensive Cities An alternative mechanism to changing the Section 5336 formula, suggested by commenters on this study, involves a takedown from the Section 5309 Bus Program. Such an approach would be consistent with the stated concerns of operators in small transit intensive cities that their needs are primarily on the capital side, rather than on the operating side. It would also have the advantage of only imposing new data reporting requirements on operators that would apply for the funding, rather than subjecting operators in all small urbanized areas to the same requirements faced by transit operators in large urbanized areas. Some broad outlines for how such a program could be structured were suggested. First, funding would come from a takedown from the total amount available for the bus portion of Section 5309, which would be reserved exclusively for use in small urbanized areas. Two options for distributing this funding were suggested. In one, a formula, similar in spirit to the Fixed Guideway Modernization Program of Section 5309, would be applied to all small urbanized areas. The formula might include the service factor components of the Section 5336 formula, or something relating to vehicle utilization rates. Small transit intensive cities would obviously be the prime beneficiaries of such a formula. Another option for distributing the takedown funds would be through discretionary grants to a criteria-limited applicant pool. Such criteria might include minimum vehicle utilization or service intensity rates. Other criteria, such as the creation of a Transportation Management Area in the small urbanized area or minimum uses of flexible funding13 for mass transit (where applicable) might also be applied. 7 Other Issues 7.1 The Role of the States State governments play a key role in providing public funding for mass transit, both in the administration of the Federal formula programs for small and nonurbanized areas and through their own transit assistance programs. The role played by the states has several features that are relevant to the discussion of the formula program. 7.1 .1 The Governor's Apportionment As noted in the description of the formula programs, one important difference between large urbanized areas (those over 200,000 in population) and small urbanized areas is that large urbanized areas receive their formula allocations directly, while the formula allocations attributable to small urbanized areas are apportioned to the Governor of the respective state. The exception for small urbanized areas occurs when they are part of a 13 Surface Transportation Program(STP)and Congestion Mitigation and Air Quality Program(CMAQ) funds. 32 designated Transportation Management Area. In this case, formula funds attributed to the area must be obligated within the small urbanized area. In practice, many states do simply "pass through" the formula allocations to the small urbanized areas, in part because the amounts attributable to each small urbanized area are published annually in the Federal Register. However, this is not required, and some states do allocate the Section 5307 Governor's Apportionment at least in part according to their own discretion or formulas. As a result, some commenters raised the possibility that any formula change increasing the allocations attributable to small transit intensive cities would not necessarily flow through to the targeted area, but could instead be used by the state in other areas. An obvious solution to this possibility would be for the small urbanized area to create a Transportation Management Area. 7.1.2 The Nonurbanized Area Formula Program and State Transit Assistance As noted above, states also receive federal formula funding under Section 5311 based on their nonurbanized area population. Since these funds are not attributable to any specific sub-state region, states must develop their own mechanisms for transferring them to local operators. Many states also have their own transit assistance programs, focusing on both capital and operating needs. Such state programs are generally available for both urbanized and nonurbanized areas. These state-administered transit assistance programs (both Section 5311 and state programs) allocate funds on either a discretionary or formula basis. Under discretionary programs,transit operators are invited to compete for the available pool of funds by submitting proposals to a selection committee, which awards funds based on a variety of factors, including outstanding needs. State funding formulas show enormous variety in their scope and complexity, but typically include some measures of existing service levels and/or financial conditions. In either case, whether discretionary or formula-based, state allocations are based on factors in addition to population and population density. Examples of three formula-based state transit funding programs and state administration of Section 5307 and 5311 programs are found in Appendix B. 7.2 The 2000 Census The population figures used in the Section 5307 and 5311 formula programs are drawn strictly from the decennial census figures. Urbanized areas are also defined by the Census Bureau based on the decennial census population counts. As a result,the population and population density figures used in the formula, as well as the location and number of urbanized areas eligible for Section 5307 funding, are updated only once every 10 years, and the resulting changes have a significant effect on the formula programs. It is expected that population figures from the 2000 Census will be incorporated into the formula apportionments beginning in FY 2002. Relative changes in population and density among urbanized areas will cause significant changes in the shares of formula funds received by each urbanized area. Some urbanized areas which are now classified as small urbanized areas will have grown to exceed the 200,000 population threshold, and 33 will thus be subject to the formula provisions applied to large urbanized areas. Some of these will likely be areas that are now considered small transit intensive cities; the new census counts will push them into the higher category, allowing their formula apportionments to reflect the high levels of service that they provide. New urbanized areas will be created, increasing the number of potential recipients of Section 5307 funds and increasing the competition for those funds. At the same time, population growth may lead to some urbanized areas being combined together. This is particularly likely for small urbanized areas adjacent to major urbanized areas. Such combinations will create an entirely new structure for the way in which transit operators in these (currently) small urbanized areas receive and spend their formula allocations.1 i5 7.3 Reporting Requirements The Federal Transit Administration is concerned about the reporting requirements that it imposes upon the recipients of federal transit assistance as the agency attempts to collect data to support the policy formation and decision-making process. Indeed, a review of the National Transit Database program is currently underway to determine what changes might be made to the information that local operators and agencies are required to report, with an eye toward limiting this burden. Any increase in the number of factors considered in the formula for small urbanized areas would lead to some additional reporting requirements that are not currently faced by operators in small urbanized areas, particularly small operators. This concern was raised by a number of commenters to the study. One advantage of using discretionary program funds to assist small transit intensive cities is that only the applicants for such funds would bear additional reporting requirements. 7.4 Small Operators in Large Urbanized Areas One commenter on the study noted that small transit operators in large urbanized areas have issues that are in some ways the reverse of those faced by small transit intensive cities. These small operators are frequently located in smaller population clusters near large cities that have grown together with the larger urbanized area. As noted above, recent urban growth patterns are likely to result in some currently small urbanized areas 1°A search of the Catalog of Domestic Federal Assistance found that the Section 5307 program is the only federal grant program apportioning funds to specific urbanized areas. Formula funding programs in other agencies, such as the Federal Highway Administration,Environmental Protection Agency,and the Department of Health and Human Services,allocate funds to states based on their urbanized area populations. While FTA uses the urbanized area definitions created by the Census Bureau, it is not strictly bound to do so. In 49 U.S.C. 5302(a)(17), an urbanized area is defined as"(A)encompassing at least an urbanized area within a State that the Secretary of Commerce designates; and(B)designated as an urbanized area within boundaries fixed by State and local officials and approved by the Secretary[of Transportation]." Thus, for purposes of the formula programs,an urbanized area could be defined to encompass a larger area (and thus more population,but a lower overall population density)than the corresponding Census-defined urbanized area(but not a smaller area,per the statute). Such adjustments in urbanized area definitions are in fact made by the Federal Highway Administration, which uses its own"Federal Aid Urbanized Area" definitions rather than those designated by the Census Bureau. 34 becoming part of larger urbanized areas once 2000 Census figures have been incorporated into the formula apportionments. The issue faced by many such operators is that their system and operating characteristics are more similar to those of small urbanized areas than they are to those of large urbanized areas. The formula apportionments that they receive, however, are based on and follow the restrictions of the large urbanized area formula program (e.g., the prohibition on using formula funds for operations). These small operators may also be disadvantaged by their size relative to other operators in the urbanized area when local decisions are made on the disbursement and uses of urbanized area formula funds. It should be noted, however, that the local decision-making process is strictly the province of state and local governments. 7.5 Large Operators in Nonurbanized areas The issues faced by small transit intensive cities may also apply to some systems in non- urbanized areas. Such systems are typically found in resort areas with small year-round populations but substantial seasonal populations and transit usage. Such systems carry far more passengers and provide much more service than is typical for nonurbanized areas, but this is not captured by the strictly population-based allocation of Section 5311 funds. The seasonal population variation also means that potential needs for such areas might not be well captured by census population statistics alone. 8 Conclusion Sufficient issues exist to suggest that changes to the existing Urbanized Area Formula Grants Program should be considered in 2002-2003 as part of the FY 2004 and beyond reauthorization cycle, when population data from the 2000 Census and the resulting urbanized area redefinitions will be available. The Section 5307, 5310, and 5311 formula apportionments should continue to reflect transit needs. Unlike many other interjurisdictional assistance programs of the federal government, existing and potential mass transit needs are not distributed evenly across the states, but instead tend to be much more concentrated. Any movement toward allocating federal transit formula funds on a basis unrelated to need would run counter to the purpose of the program. As currently constituted, the Section 5307 formula program as applied to small urbanized areas reflects potential need but does not explicitly reflect existing need. This is in contrast to large urbanized areas--where existing needs are captured by the use of service level factors in the formula, and nonurbanized areas--where states allocate their apportionments on a discretionary or formula basis that does take account of existing need. This latter fact runs counter to the argument that only large cities (which generally have higher transit service levels) should have service factors applied in determining their allocations. The end result of the existing formula structure is that small transit intensive cities, which have above-average existing needs relative to their size, receive less formula funding than they would if the formula included service level factors. 35 The 2000 Census of Population will have a significant impact on the formula apportionments in both the urbanized and nonurbanized formula grants programs. These changes, likely effective in FY 2002, will lead into the discussion and debate surrounding the reauthorization of the federal transit program following the expiration of TEA-21 in 2003. FTA does not support reopening the current authorization and addressing formula program issues before then. Some possible changes to federal transit assistance programs have been raised and analyzed in this report. The Federal Transit Administration views these proposals as a starting point for discussions of how to maintain a federal transit assistance program that continues to reflect and meet the needs of our Nation's mass transit systems. We welcome comments on this study and look forward to a continuing dialogue with Congress,the public transit industry, and the general public. 36 Appendix A Data and Methodology Operating data used in this report were drawn from the National Transit Database(NTD) for 1996-98. This data is required to be reported by all operators in urbanized areas with more than nine vehicles. Some of the measures used, such as unlinked passenger trips and vehicle revenue hours, are only available at the operator/mode level. In linking such data to particular urbanized areas, only the primary urbanized area served by the transit operator was used. Transit operators in large urbanized areas are further required to disaggregate data used for formula apportionment purposes, including passenger miles, vehicle revenue miles, and operating costs,by the urbanized area that is served, including both large urbanized areas and small urbanized areas.' Thus, the exact area to which the data applies may vary depending on which measure is being tabulated. Data on formula funding levels were drawn from FTA statistics. Aggregate amounts by urbanized area size are based on the primary urbanized area served by the operator, as was the operating data used in the comparisons in Exhibit 2. Passenger data for nonurbanized areas were drawn from a recent FTA-commissioned survey. The statistical outliers were identified by the use of multiple regression analysis. Linear regressions of passenger miles and vehicle revenue miles on urbanized area population and population density were performed using data for all small urbanized areas. The outliers were identified by examining the standardized residuals for each urbanized area from the regression; areas with a standardized residual greater than two were deemed outliers. While there are some technical statistical issues associated with this approach, it does help identify cities that have substantially greater transit service than would be predicted based on their population and density characteristics alone. In tabulating the alternative formula funding levels for FY 2000, only bus, demand response, and vanpool operating statistics were used. All such data were classified as non-fixed guideway data for formula purposes. Were the formula to actually be applied in this way, however, it is possible that some of the fixed route bus miles for operations on HOV lanes would be attributed as fixed guideway operations, as is done in large urbanized areas. This would be particularly likely for small urbanized areas adjacent to large cities. For example,the Denver Regional Transit District serves the urbanized areas of Denver(large)and Boulder and Longmont(small). A-1 The actual service level measures used to identify small transit intensive cities in Exhibit I are shown in the following tables: Exhibit A-1 Small Transit Intensive Cities Vehicle Utilization Average Annual Passenger Miles Per Vehicle Revenue Mile and Per Vehicle Revenue Hour 1996-98 Passenger Miles Per Vehicle Revenue Mile Passenger Miles Per Vehicle Revenue Hour Average for urbanized areas Average tor urbanized areas 200,000-1 million 7.29 200,000-1 million 95.54 Brownsville,lX 22.73 Lancaster-Palmdale, CA 346.53 Monessen, PA 17.05 Brownsville, TX 256.61 Lancaster-Palmdale, CA 12.84 Monessen, PA 242.50 Kailua, HI 12.82 Richland-Kennewick-Pasco,WA 182.13 Laredo, TX 11.55 Bremerton, WA 159.96 Santa Barbara, CA 10.73 Santa Cruz, CA 147.72 Champaign-Urbana, IL 10.52 Poughkeepsie, NY 141.72 Santa Cruz, CA 10.43 Santa Barbara, CA 140.57 Lubbock,TX 9.42 Lubbock,TX 131.84 Richland-Kennewick-Pasco,WA 9.20 Champaign-Urbana, IL 127.47 Davis, CA 9.13 Santa Rosa, CA 122.70 Boulder, CO 8.65 Laredo,TX 118.51 Stamford, CT-NY 8.61 Eugene-Springfield, OR 115.58 Lafayette, LA 8.50 Monroe, LA 111.98 Santa Rosa, CA 8.42 Seaside-Monterey, CA 110.59 Eugene-Springfield, OR 8.30 Brockton, MA 106.21 Taunton, MA 8.12 Winston-Salem, NC 104.78 Bremerton, WA 8.10 Palm Springs, CA 102.88 Brockton, MA 8.07 Lafayette, LA 100.62 New London-Norwich, CT 8.00 Stamford, CT-NY 100.16 Monroe, LA 7.92 Davis, CA 97.64 Beaumont, TX 7.62 Beaumont, TX 96.90 A-2 Exhibit A-2 Small Transit Intensive Cities Transit Service Provision Average Annual Vehicle Revenue Miles Per Capita 1996-98 Average for urbanized areas 200,000-1 million 11.13 Florence, SC 87.97 Dover, DE 16.39 Richland-Kennewick-Pasco, WA 46.23 Pittsfield, MA 15.72 Bremerton, WA 44.20 Oshkosh, WI 15.33 Olympia, WA 44.07 Port Huron, MI 15.32 Bellingham, WA 33.39 Redding, CA 15.28 Hyannis, MA 31.95 Taunton, MA 14.26 Santa Fe, NM 31.38 St. Cloud, MN 14.25 Boulder, CO 25.90 Racine, WI 14.09 Ithaca, NY 23.65 Savannah, GA 13.91 Sumter, SC 22.53 Brockton, MA 13.67 Santa Cruz, CA 22.23 Sheboygan, WI 13.35 Newark, OH 21.81 Fayetteville-Springdale, AR 13.35 Eugene-Springfield, OR 21.32 Gainesville, FL 13.09 Newport, RI 20.85 Santa Rosa, CA 12.89 Champaign-Urbana, IL 20.83 Tallahassee, FL 12.72 Fitchburg-Leominster, MA 20.65 Binghamton, NY 12.56 Seaside-Monterey, CA 20.63 Laredo, TX 12.19 Elmira, NY 20.38 Winston-Salem, NC 12.16 Myrtle Beach, SC 19.78 Santa Barbara, CA 12.14 Iowa City, IA 19.71 Erie, PA 12.04 Deltona, FL 17.84 Lancaster, PA 11.87 Duluth, MN-WI 16.90 Salem, OR 11.70 Bay City, MI 16.80 Vero Beach, FL 11.64 Charleston, WV 16.69 Jackson, MI 11.63 Galveston, TX 16.55 State College, PA 11.62 Palm Springs, CA 16.55 Muncie, IN 11.39 New Bedford, MA 16.48 Lafayette-West Lafayette, IN 11.28 A-3 Exhibit A-3 Small Transit Intensive Cities Transit Service Provision Average Annual Vehicle Revenue Hours Per Capita 1996-98 Average for urbanized areas20U,U0U-1 million Florence, SC 3./93 Charleston,WV 01.020 1 Olympia, WA 2.860 New Bedford, MA 1.003 Bellingham, WA 2.407 Palm Springs, CA 1.003 Richland-Kennewick-Pasco, WA 2.335 Redding, CA 0.987 Bremerton, WA 2.239 Davis, CA 0.956 Santa Fe, NM 1.948 Sumter, SC 0.939 Iowa City, IA 1.794 Vero Beach, FL 0.939 Champaign-Urbana, IL 1.719 Santa Barbara, CA 0.9290.926 Hyannis, MA 1.614 Fayetteville-Springdale,AR 0.919 Santa Cruz, CA 1.569 Myrtle Beach, SC Eugene-Springfield, OR 1.531 Lafayette-West Lafa ette, IN 0.906 Newark, OH 1.480 Springfield, IL y 0.892 Fitchburg-Leominster, MA 1.444 Muncie, IN 0.892 Ithaca, NY 1.389 Santa Rosa, CA 0.888 Seaside-Monterey, CA 1.313 Johnstown, PA 0.885 Duluth, MN-WI 1.295 Burlington, VT 0.865 Port Huron, MI 1.230 Erie, PA 0.865 Galveston, TX 1.201 Lancaster, PA 0.864 Laredo, TX 1.187 Norwalk, CT 0.854 Elmira, NY 1.171 Winston-Salem, NC 0.848 Oshkosh, WI 1.125 Portland, ME 0.845 Sheboygan, WI 1.124 Pittsfield, MA 0.824 State College, PA 1.094 Salem, OR 0.821 2 Racine, WI 1.089 Binghamton, NY 0.810 10 Bay City, MI 1.083 Eau Claire, WI 0.804 Tallahassee, FL 1.078 Jackson, MI 0.803 St. Cloud, MN 1.057 York, PA 0.803 Savannah, GA 1.046 0.803 Brockton, MA Charlottesville, VA 0.780 1.038 La Crosse, WI-MN 0.772 Gainesville, FL 1.030 A-4 Exhibit A-4 Small Transit Intensive Cities Transit Service Consumption Average Annual Passenger Miles and Unlinked Passenger Trips Per Capita 1996- r Passenger Miles Per Capita Unlinked Passenger Trips Per Capita Average tor urbanized areas Average tor uionnized areas 200,000-1 million 17.97 200,000-1 million 81.14 1/.94 425.3b Champaign-Urbana, IL 70.64 Bremerton,WA Richland-Kennewick-Pasco,WA 358.20 Iowa City, IA Bremerton,Sc307.27 Bellingham,WA 49.52 lorence, C Bremerton,WA 47.99 Santa Cruz, CA 231.84 43 21 Boulder, CO 223.92 Santa Cruz, CA 41.02 Champaign-Urbana, IL 219.16 Eugene-Springfield, OR 40.00 Davis, CA Olympia,WA 189'60 39.91 Eugene-Springfield, OR 176.96 Olympia,WA Bellingham,WA 164.19 Richland-Kennewick-Pasco,WA 39.59 State College, PA 38.81 Newport, RI 150.21 37.05 145 22 Santa Barbara, CA 36.23 Brownsville, , CA Laredoe-Monterey TX 140.71 Laredo,TX Brownsville,TX 140.08 Seaside-Monterey, CA 29.08 Monessen, PA 139 Duluth, MN-WI 25.66 24 24.79 130.20 Tallahassee, FL Santa TaBaunton, MAa, CA 115.71 Ithaca, NY 24.74 Be MA 115.19 New Bedford, MA 24.68 ro Bon, MA rd, MA Galveston,TX 24.67 Brockton, 110.27 24.25 Santa Rosa, CA 108.54 Palm Springs, CA 105.06 Brockton, MA 22.77 Palm Springs, MA 102.99 Port Huron, MI 22.61 ac p CA 101.97 St. Cloud, MN 22.49 Ithaca, NY 22.21 Davis, CA 93.31 Salem, OR 21.34 Iowa City, IA 91.70 Williamsport, PA 88.56 Fayetteville-Springdale,AR 21.14 LWancaster-Palmdale, Palm alN 86 83 Gainesville, FL 20.04 Lancaster-Palmdale, CA Logan, UT 19.87 Binghamton, NY 19.76 Lubbock,TX 19.00 Oshkosh,WI 18.87 Burlington, VT 18.53 Johnstown, PA 18.21 Winston-Salem, NC 18.12 Savannah, GA 18.00 A-5 Appendix B Examples of Formula-Based State Transit Funding Programs Ohio The State of Ohio assists local transit operators through the Ohio Public Transportation Grant Program. The program provides assistance to local transit operators to meet the local match requirements of Federal Transit Administration grants under the Section 5307, 5311, and 5309 programs. Funding for the program totaled $38 million in FY2000, of which $25.5 million was allocated on a formula basis, with the remainder allocated for discretionary capital grants. Formula funds are first distributed by fixed percentages to five categories of transit systems: Large Rail/Bus, Large Bus Only, Intermediate Bus, Small Bus, and Non- urbanized Bus. Within each category, funds are allocated on a formula using 3 factors: Ridership 50% Revenue Service Miles 25% Local Financial Support 25% Within the Small Bus Systems category, there is significant diversity between fixed route bus and demand response systems. To account for this, ridership levels and revenue service miles for demand response systems are multiplied by 2.8 and 0.83, respectively. These ratios are based on historic state data on relative costs per rider and per revenue mile between demand response and fixed route bus service. Iowa The state of Iowa provides capital and operating assistance to local transit operators through its State Transit Assistance (STA) Program. STA provides assistance through both a formula and a discretionary special projects program. The formula program has separate tiers for regional (rural, multi-county) systems and urban systems (cities over 20,000 in population, which includes both urbanized areas and nonurbanized areas). Program funds are first divided between regional and urban systems on the basis of revenue miles. Within each group, funds are then allocated according to three formula factors: Revenue miles per dollar of operating cost 25% Ridership per dollar of operating cost 25% Locally determined income 50% The state also uses a formula to distribute the Governor's Apportionment for Section 5310 and Section 5311 funds. The Governor's Apportionment is first divided between regional and urban systems on the basis of the systems' total "Net Public Deficit." Funds B-1 are then allocated according to ridership and revenue miles. The factor weights are different for rural and urban systems: Regional Urban Revenue miles 60% Revenue miles 50% Ridership 40% Ridership 50% Section 5307 funds for small urbanized areas are allocated on both a formula and discretionary basis. Eighty percent of the funds are allocated based on the federal formula apportionments for each small urbanized area, while the remaining 20 percent are allocated based on peer pool recommendations and on scoring through the state's Public Transportation Management System(PTMS). New York The State of New York provides operating assistance to local transit operators through the State Mass Transportation Operating Assistance (STOA) Program. STOA funds are allocated both to "Specified" systems (large systems whose funding is a specific line item in the state budget) and "Formula" systems (other, smaller systems receiving funding on the basis of a formula). The formula program has separate tiers for Downstate (New York City metropolitan region) and Upstate systems. Formula funding is based on a fixed amount per vehicle revenue mile and per passenger, and is adjusted quarterly. For the quarter from July-September 1999, the rates were $0.405 per passenger and $0.69 per vehicle mile. The formula also has components for costs related to the implementation of the Americans with Disabilities Act of 1990 (ADA) (based on passengers and population) and for bus systems that interline passengers with commuter rail operations (50 percent of the lost revenue due to free rail/bus transfers). New York State also provides capital assistance for local transit operators. Capital assistance for non-Metropolitan Transit Authority operators has two components. The first provides 50 percent of the local match for FTA-funded capital projects, while the second provides additional capital assistance to local operators based on a state assessment of transit capital needs. B-2 Hello