A dynamic optimization model for bus schedule design to mitigate the passenger waiting time by dispatching the bus platoon

Yi Zhang, R. Su, Yicheng Zhang
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引用次数: 4

Abstract

We present a platoon-based bus dispatching strategy and passenger boarding strategy which utilizes a platoon of vehicles to improve capacity flexibility in response to dynamically changing demands, and controls passenger boarding flows to minimize the networkwise passengers’ perceived delay time. The released buses in the same platoon are allowed to separate when approaching the stop station, which makes our strategy more flexible and data-driven. A Mixed Integer Linear Programming (MILP) model is firstly developed to formulate the problem with the linear cost, in which both the passengers’ actual delay time and the operating bus vacancy are minimized subject to the volume dynamic constraints on both buses and stops. With the computational complexity as a concern, the Genetic Algorithm (GA) is adopted to solve the problem in real time. Comparison between MILP and GA on the computational time and result quality is conducted to show the efficiency of our method. Also, the optimization model with the nonlinear cost considering the passengers’ perceived delay time and the operating bus vacancy is directly solved by the GA. Finally, the performance of our method and the traditional bus schedule strategies under two different objectives is discussed in the case study, which indicates the potential of the platoon dispatching in mitigating the passenger’s perceived delay.
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通过调度公交排来减少乘客等待时间的公交调度设计动态优化模型
提出了一种基于队列的公交调度策略和乘客上车策略,该策略利用车辆队列来提高响应动态变化需求的能力灵活性,并控制乘客上车流以最小化网络上乘客的感知延迟时间。在接近车站时,允许同一排释放的公交车分开,使我们的策略更加灵活和数据驱动。首先建立了混合整数线性规划(MILP)模型,在公交和站点的体积动态约束下,使乘客的实际延误时间和运行中的公交车空置量都达到最小。考虑到计算复杂度,采用遗传算法实时求解该问题。将MILP算法与遗传算法在计算时间和结果质量上进行了比较,证明了该方法的有效性。同时,利用遗传算法直接求解了考虑乘客感知延误时间和运营公交车空置率的非线性成本优化模型。最后,通过实例分析,比较了该方法与传统公交调度策略在两种不同目标下的性能,表明了排调度在缓解乘客感知延误方面的潜力。
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