基于仿真的动态交通分配启发式算法

M. Mahut
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引用次数: 5

摘要

智能交通系统技术旨在改善和优化交通网络的利用率,需要精确和高效的交通模型和算法。对于许多应用,这些模型必须在尽可能短的时间内,在合理的误差范围内解决动态交通分配问题,即为网络中所有车辆找到最优路径选择。提出了一种求解动态(时变)用户最优分配问题的迭代算法。该算法产生与时间相关的分配,当用于交通仿真模型时,产生近似满足用户最优条件的经验路径旅行时间。该模型在一个小型但具有挑战性的网络上进行了测试,并将收敛(平衡)结果与使用逐次平均方法(MSA)的变体获得的结果进行了比较。通过与解析确定的精确平衡队列长度的比较,对模型结果进行了详细的检验。在这些测试中,发现所提出的模型表现得很好,并且比MSA收敛得更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A heuristic algorithm for simulation-based dynamic traffic assignment
ITS technologies that aim to improve, and ideally optimize, the utilization of the transportation network require accurate and efficient traffic models and algorithms. For many applications, these models must solve the dynamic traffic assignment problem - i.e., to find the optimal path choices for all vehicles in the network - within a reasonable margin of error in the shortest possible time. This paper presents an iterative algorithm for the dynamic (time dependent) user-optimal assignment problem. The algorithm produces time-dependent assignments which, when used in a traffic simulation model, result in experienced path travel times that approximately satisfy user-optimal conditions. The model is tested on a small but challenging network, for which convergence (to equilibrium) results are compared with those obtained using a variant of the method of successive averages (MSA). The model results are also examined in detail by comparison with the exact equilibrium queue lengths determined analytically. The proposed model is found to perform very well under these tests, and to converge faster than the MSA.
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