Promet (Zagreb) (Dec 2019)

Dynamic Demand Forecast and Assignment Model for Bike-and-Ride System

  • Siyuan Zhang,
  • Shijun Yu,
  • Shejun Deng,
  • Qinghui Nie,
  • Pengpeng Zhang,
  • Chen Chen

DOI
https://doi.org/10.7307/ptt.v31i6.3197
Journal volume & issue
Vol. 31, no. 6
pp. 621 – 632

Abstract

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Bike-and-Ride (B&R) has long been considered as an effective way to deal with urbanization-related issues such as traffic congestion, emissions, equality, etc. Although there are some studies focused on the B&R demand forecast, the influencing factors from previous studies have been excluded from those forecasting methods. To fill this gap, this paper proposes a new B&R demand forecast model considering the influencing factors as dynamic rather than fixed ones to reach higher forecasting accuracy. This model is tested in a theoretical network to validate the feasibility and effectiveness and the results show that the generalised cost does have an effect on the demand for the B&R system.

Keywords