4.7 Article

A Proactive Real-Time Control Strategy Based on Data-Driven Transit Demand Prediction

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2020.3028415

Keywords

Real-time systems; Reliability; Dispatching; Public transportation; Monitoring; Data-driven transit demand prediction; proactive real-time control; dispatching time

Funding

  1. National Natural Science Foundation of China [71961137008, U1811463, 61873109]
  2. Social Science Foundation of the Ministry of Education [18YJA630157]

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This article proposes a proactive real-time control method based on data-driven transit demand prediction with multi-source traffic data, aiming to predict possible disturbances and take measures in advance. The bus dispatching time is optimized based on the predicted results to minimize passenger waiting time. Evaluation with real data shows that the control method based on transit demand prediction is suitable for real-time control in the smart transit context.
With the technological innovation, public transit has truly entered the era of big data. Bus operators have been possible to monitor the system conditions and obtain the real-time transit demand. This situation inspires us to rethink the transit demand prediction and real-time control problems. This article proposes a proactive real-time control method based on data-driven transit demand prediction with multi-source traffic data. A proactive control strategy is to predict the possible disturbance in the future by monitoring and inferring the system operation, and takes measures in advance to prevent the disturbance from disrupting the service regularity. Firstly, the further service reliability is assessed based on the evolution of the latest service reliabilities, to justify whether to conduct control actions. Secondly, if a control action is required, predict the transit demand and the number of alighting passengers. Thirdly, according to the predicted results, the bus dispatching time is optimized by minimizing passenger waiting time. A calculation process is introduced to solve the problem and the effectiveness of the proposed method is evaluated with the data of a real transit route. The results show that the control method based on transit demand prediction suits the needs of real-time control in the smart transit context.

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