基于有限理性的考虑实时中断的软时间窗口需求响应型公交服务

Hongfei Wang, Hongzhi Guan, H. Qin, Jun Guo
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摘要

基于智能手机应用的需求响应式公交(DRT)正在成为一种灵活、可持续的交通服务,改变着城市交通。然而,为了满足实时和不一致的需求,捕捉取消订单的决策心理变得越来越重要。本研究提出了一个两阶段优化框架,以应对实时中断,包括订单取消和插入新的实时乘客。与随机实时需求相比,本文更关注反馈信息对订单取消的影响。本文将有限理性纳入模型,讨论取消订单行为的决策过程。针对软窗口,本文提出了一种补偿策略,以促进利润,同时鼓励乘客长期使用。此外,还构建了基于可变邻域搜索(VNS)和滚动视界的求解算法,以接近帕累托解集。为了验证所提算法的有效性,在简化的苏福尔斯网络中进行了多次小规模实验。同时,还在北京进行了实际案例研究,以评估考虑到实时中断的系统性能。结果表明,动态 DRT 服务能大幅提高系统利润,但会增加惩罚成本。由于插入了实时乘客,利润大幅提高至 940(人民币)元。因此,本研究不仅为乘客取消行为的分析提供了更深入的见解,还有助于构建更灵活的 DRT 服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demand-Responsive Transit Service With Soft Time Windows Considering Real-Time Disruptions Based on Bounded Rationality
Demand-responsive transit (DRT) with smartphone-based applications is emerging as a flexible and sustainable mobility service, transforming urban transportation. Nevertheless, to satisfy the real-time and inconsistent demand, it is becoming increasingly important to capture the decision-making psychology of order cancellations. In this study, a two-phase optimization framework is presented in response to real-time disruptions, including order cancellations and the insertion of new real-time passengers. In contrast to random real-time demand, this paper is more concerned about the impacts of the feedback information on order cancellations. Bounded rationality is incorporated into the model to discuss the decision-making process of cancellation behaviors. With regard to the soft window, a compensation strategy is proposed to promote the profit while encouraging passengers for a long-term use. Additionally, solution algorithm based on variable neighborhood search (VNS) and rolling horizon is constructed to approach the Pareto solutions set. To testify the validity of the proposed algorithm, small-scale experiments in simplified Sioux Falls network are investigated for multiple runs. Meanwhile, a real-world case study in Beijing is explored to evaluate the system performance considering real-time disruptions. The results indicate that the dynamic DRT service can substantially improve the system profit but increase the penalty cost. The profit presents a significant improvement to 940 (renminbi) RMB as a result of the insert of real-time passengers. This study, therefore, not only provides a deeper insight into the analysis of passenger cancellation behavior but also contributes to construct a more flexible DRT service.
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