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Forecasting ridership for a metropolitan transit authority
Highlights ► Transit ridership is analyzed to identify relevant factors that influence transit use. ► Operating funds (a measure of service supply) is highly significant; gas price is not. ► Alternative forecasting models are developed to predict transit ridership. ► A combination of forecasting methods yields superior forecast accuracy. ► A scenario analysis is conducted to assess the impact of transit policies.
Abstract The recent volatility in gasoline prices and the economic downturn have made the management of public transportation systems particularly challenging. Accurate forecasts of ridership are necessary for the planning and operation of transit services. In this paper, monthly ridership of the Metropolitan Tulsa Transit Authority is analyzed to identify the relevant factors that influence transit use. Alternative forecasting models are also developed and evaluated based on these factors—using regression analysis (with autoregressive error correction), neural networks, and ARIMA models—to predict transit ridership. It is found that a simple combination of these forecasting methodologies yields greater forecast accuracy than the individual models separately. Finally, a scenario analysis is conducted to assess the impact of transit policies on long-term ridership.
Forecasting ridership for a metropolitan transit authority
Highlights ► Transit ridership is analyzed to identify relevant factors that influence transit use. ► Operating funds (a measure of service supply) is highly significant; gas price is not. ► Alternative forecasting models are developed to predict transit ridership. ► A combination of forecasting methods yields superior forecast accuracy. ► A scenario analysis is conducted to assess the impact of transit policies.
Abstract The recent volatility in gasoline prices and the economic downturn have made the management of public transportation systems particularly challenging. Accurate forecasts of ridership are necessary for the planning and operation of transit services. In this paper, monthly ridership of the Metropolitan Tulsa Transit Authority is analyzed to identify the relevant factors that influence transit use. Alternative forecasting models are also developed and evaluated based on these factors—using regression analysis (with autoregressive error correction), neural networks, and ARIMA models—to predict transit ridership. It is found that a simple combination of these forecasting methodologies yields greater forecast accuracy than the individual models separately. Finally, a scenario analysis is conducted to assess the impact of transit policies on long-term ridership.
Forecasting ridership for a metropolitan transit authority
Chiang, Wen-Chyuan (Autor:in) / Russell, Robert A. (Autor:in) / Urban, Timothy L. (Autor:in)
Transportation Research Part A: Policy and Practice ; 45 ; 696-705
26.04.2011
10 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
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