按需乘车服务运营的多功能模拟平台

IF 12.5 Q1 TRANSPORTATION
Siyuan Feng , Taijie Chen , Yuhao Zhang , Jintao Ke , Zhengfei Zheng , Hai Yang
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引用次数: 0

摘要

按需乘车服务或乘车外包服务在过去十年中经历了快速发展,并稳步重塑了人们的出行方式。包括强化学习方法在内的各种优化算法已被开发出来,以帮助乘车外包平台设计更好的运营策略,从而实现更高的效率。然而,由于成本和可靠性问题,在现实世界的乘车外包平台中验证这些模型和训练/测试这些优化算法通常是不可行的。因此,作为一个合适的测试平台,乘车外包系统仿真平台对研究人员和工业从业人员都至关重要。虽然之前的研究已经为其任务建立了模拟器,但它们缺乏一个公平、公开的平台来比较不同研究人员提出的模型/算法。此外,现有的模拟器还面临着许多挑战,从是否贴近真实的乘车外包系统环境到所能实现任务的完整性等。为了应对这些挑战,我们提出了一个新颖的真实交通网络上的乘车外包系统模拟平台。它提供了几个可访问的门户,用于训练和测试各种优化算法,特别是强化学习算法,以完成各种任务,包括按需匹配、闲置车辆重新定位和动态定价。通过基于真实世界数据的实验评估,证明该模拟器是按需乘车服务运营相关各种任务的高效测试平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-functional simulation platform for on-demand ride service operations
On-demand ride services or ride-sourcing services have been experiencing fast development and steadily reshaping the way people travel in the past decade. Various optimization algorithms, including reinforcement learning approaches, have been developed to help ride-sourcing platforms design better operational strategies to achieve higher efficiency. However, due to cost and reliability issues, it is commonly infeasible to validate these models and train/test these optimization algorithms within real-world ride-sourcing platforms. Acting as a proper test bed, a simulation platform for ride-sourcing systems will thus be essential for both researchers and industrial practitioners. While previous studies have established simulators for their tasks, they lack a fair and public platform for comparing the models/algorithms proposed by different researchers. In addition, the existing simulators still face many challenges, ranging from their closeness to real environments of ride-sourcing systems to the completeness of tasks they can implement. To address the challenges, we propose a novel simulation platform for ride-sourcing systems on real transportation networks. It provides a few accessible portals to train and test various optimization algorithms, especially reinforcement learning algorithms, for a variety of tasks, including on-demand matching, idle vehicle repositioning, and dynamic pricing. Evaluated on real-world data-based experiments, the simulator is demonstrated to be an efficient and effective test bed for various tasks related to on-demand ride service operations.
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CiteScore
15.20
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