可扩展的 Python 开放源码仿真平台,用于开发总线保持策略并进行基准测试

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2024-10-16 DOI:10.1109/OJITS.2024.3481506
Minyu Shen;Chaojing Li;Yuezhong Wu;Xiaowen Bi;Feng Xiao
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引用次数: 0

摘要

在不断发展的城市中,效率低下和不可靠的公共交通系统仍然是一个重大挑战,其中公交车拥挤是导致乘客不满的主要原因。尽管提出了许多缓解这一问题的控制策略,但却缺乏对其进行全面评估的标准化测试平台。本文介绍了一个开源、可扩展的仿真平台,该平台可在统一的环境中对公交车停靠策略进行开发和基准测试。该平台同时支持基于模型和无模型的强化学习(RL)控制策略,提供了一种在各种运行条件下评估其性能的系统方法。用户可以在我们的平台上对保持控制策略进行定制,只要他们创建的类符合公开的应用编程接口(API)的基本要求即可。该平台的设计易于扩展,允许用户纳入真实世界的数据集,并定制详细的操作功能。我们通过比较三种保持策略来展示该平台的功能:一种基于模型的前向车头控制方法和两种基于 RL 的方法。实验结果凸显了综合评估的重要性,因为在不同的保持时间预算下,不同策略的相对性能各不相同。所提出的仿真平台旨在促进巴士运营控制策略研究的稳健性、可比性和可重复性,最终在实际应用中提高巴士服务的可靠性。
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An Extensible Python Open-Source Simulation Platform for Developing and Benchmarking Bus Holding Strategies
Inefficient and unreliable public transportation systems remain a significant challenge in growing cities, with bus bunching being a key contributor to passenger dissatisfaction. Despite numerous proposed holding strategies to mitigate this issue, there is a lack of a standardized testbed for their comprehensive evaluation. This paper presents an open-source, extensible simulation platform that enables the development and benchmarking of bus holding strategies in a unified environment. It accommodates both model-based and model-free reinforcement learning (RL) control strategies, providing a systematic approach to assess their performance under various operating conditions. Holding control strategies can be customized by users within our platform, provided they create a class that fulfills the basic requirements of the exposed application programming interface (API). The platform is designed to be easily extensible, allowing users to incorporate real-world datasets and customize detailed operational features. We demonstrate the platform’s capabilities by comparing three holding strategies: a modelbased forward headway control method and two RL-based approaches. Experimental results highlight the importance of comprehensive evaluations, as the relative performance of different strategies varies under different holding time budgets. The proposed simulation platform aims to facilitate more robust, comparable, and reproducible research in bus operation control strategies, ultimately leading to improved bus service reliability in real-world implementations.
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