TRANSIT-GYM: A Simulation and Evaluation Engine for Analysis of Bus Transit Systems

Ruixiao Sun, Rongze Gui, H. Neema, Yuche Chen, Juliette Ugirumurera, Joseph Severino, Philip Pugliese, Aron Laszka, A. Dubey
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引用次数: 5

Abstract

Public-transit systems face a number of operational challenges: (a) changing ridership patterns requiring optimization of fixed line services, (b) optimizing vehicle-to-trip assignments to reduce maintenance and operation codes, and (c) ensuring equitable and fair coverage to areas with low ridership. Optimizing these objectives presents a hard computational problem due to the size and complexity of the decision space. State-of-the-art methods formulate these problems as variants of the vehicle routing problem and use data-driven heuristics for optimizing the procedures. However, the evaluation and training of these algorithms require large datasets that provide realistic coverage of various operational uncertainties. This paper presents a dynamic simulation platform, called TRANSIT-GYM, that can bridge this gap by providing the ability to simulate scenarios, focusing on variation of demand models, variations of route networks, and variations of vehicle-to-trip assignments. The central contribution of this work is a domain-specific language and associated experimentation tool-chain and infrastructure to enable subject-matter experts to intuitively specify, simulate, and analyze large-scale transit scenarios and their parametric variations. Of particular significance is an integrated microscopic energy consumption model that also helps to analyze the energy cost of various transit decisions made by the transportation agency of a city.
公交-体育馆:公交系统分析的仿真与评估引擎
公共交通系统面临着许多运营挑战:(a)改变乘客模式,需要优化固定线路服务,(b)优化车辆到行程的分配,以减少维护和操作代码,以及(c)确保公平和公平地覆盖客流量低的地区。由于决策空间的大小和复杂性,优化这些目标是一个难以计算的问题。最先进的方法将这些问题表述为车辆路线问题的变体,并使用数据驱动的启发式方法来优化程序。然而,这些算法的评估和训练需要大型数据集,以提供各种操作不确定性的实际覆盖。本文提出了一个动态仿真平台,称为TRANSIT-GYM,它可以通过提供模拟场景的能力来弥补这一差距,专注于需求模型的变化、路线网络的变化以及车辆到行程分配的变化。这项工作的核心贡献是一个领域特定的语言和相关的实验工具链和基础设施,使主题专家能够直观地指定、模拟和分析大规模的运输场景及其参数变化。特别有意义的是一个综合的微观能源消耗模型,它也有助于分析城市交通机构所做的各种交通决策的能源成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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