Abstract

Various factors can make predicting bus passenger demand uncertain. In this study, a bilevel programming model for optimizing bus frequencies based on uncertain bus passenger demand is formulated. There are two terms constituting the upper-level objective. The first is transit network cost, consisting of the passengers’ expected travel time and operating costs, and the second is transit network robustness performance, indicated by the variance in passenger travel time. The second term reflects the risk aversion of decision maker, and it can make the most uncertain demand be met by the bus operation with the optimal transit frequency. With transit link’s proportional flow eigenvalues (mean and covariance) obtained from the lower-level model, the upper-level objective is formulated by the analytical method. In the lower-level model, the above two eigenvalues are calculated by analyzing the propagation of mean transit trips and their variation in the optimal strategy transit assignment process. The genetic algorithm (GA) used to solve the model is tested in an example network. Finally, the model is applied to determining optimal bus frequencies in the city of Liupanshui, China. The total cost of the transit system in Liupanshui can be reduced by about 6% via this method.

Highlights

  • It is important to determine the optimal transit frequencies when public transport issues, such as network planning or operation plan scheduling, are being decided

  • The total cost of the transit system in Liupanshui can be reduced by about 6% via this method

  • The collected data have not taken the uncertain demand into account

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Summary

Introduction

It is important to determine the optimal transit frequencies when public transport issues, such as network planning or operation plan scheduling, are being decided. Regarding the above network design problems of capacity expansion or congestion pricing, the sampling simulation method is adopted to deal with uncertain demand. This method requires too much running time, and it cannot be applied to large networks. The point approximation method has been adopted to determine the near-optimal road toll price under uncertain demand [12], while this method has only been shown to provide a good solution in a small test network. Once the demand conforms to Poissons’ distribution, the objective form of total travel time can be acquired by his method Referring to this idea of objective deduction, an analytical method is proposed in the present study to determine the optimal bus frequencies.

Model Development and Analysis
Upper-Level Model
Solution Algorithm
Test Network
Objective
Findings
Conclusion
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