Urban Rail Transit (Oct 2023)

Research on Time-Based Fare Discount Strategy for Urban Rail Transit Peak Congestion

  • Xiaobing Ding,
  • Chen Hong,
  • Jinlong Wu,
  • Lu Zhao,
  • Gan Shi,
  • Zhigang Liu,
  • Haoyang Hong,
  • Zhengyuan Zhao

DOI
https://doi.org/10.1007/s40864-023-00203-3
Journal volume & issue
Vol. 9, no. 4
pp. 352 – 367

Abstract

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Abstract To alleviate peak-hour congestion in urban rail transit, this study proposes a new off-peak fare discount strategy to incentivize passengers to shift their departure time from peak to off-peak hours. Firstly, a questionnaire survey of Shanghai metro passengers is conducted to analyze their willingness to change departure time under different fare strategies. Secondly, based on the survey results, a time-differentiated fare discount model is constructed, considering both the company’s revenue and passengers’ travel benefits, and with the optimization objective of achieving balanced peak-hour and off-peak-hour train loads throughout the day. Subsequently, a genetic algorithm with nested fmincon functions is designed and combined with the actual data of Shanghai rail transit line 9 for arithmetic analysis. Finally, the effectiveness of the model is validated using the survey data. The research results show that the off-peak fare discount strategy can incentivize 6.88% of passengers traveling in the morning peak and 6.66% of passengers traveling in the evening peak to shift to off-peak travel. This research provides theoretical support and decision-making guidance for implementing time-differentiated pricing in urban rail transit systems.

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