自适应交通信号控制的稀疏协作多智能体框架

Mahmoud Nawar, Ahmed M. Fares, A. Al-sammak
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引用次数: 0

摘要

构建可扩展的、自适应的、协作的交通信号控制系统仍有待于相关研究团体的进一步探索,包括计算机科学和交通研究团体。本文在协调图框架的基础上,提出了一种可扩展的多智能体框架,将全局目标分解为局部边缘函数的线性和。在密集网络中,基于边缘的分解与边缘呈线性关系。将max-plus联合动作选择算法与稀疏协同q -学习(SparseQ)和相对稀疏协同q -学习(RSparseQ)两种无模型协作方法相结合,用于控制多交集网络。进行了大量的实验,结果证明了我们提出的框架的有效性。与独立q学习智能体相比,我们提出的框架在车辆行程时间、等待时间和拥堵长度方面取得了更好的性能。此外,报告结果表明,所提出的RSparseQ在避免车辆瞬移方面优于SparseQ,从而提高了驾驶员满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SCMA: A Sparse Cooperative Multi-Agent Framework for Adaptive Traffic Signal Control
Building scalable, adaptive, and collaborative traffic signal control system still remains to be further explored across relevant research communities, including computer science and transportation groups. In this study, a scalable multi-agent framework is proposed based on the coordination graphs framework where the global objective is decomposed into a linear sum of local edge-based functions. The proposed edge-based decomposition scales linearly with edges in dense networks. A novel combination of max-plus joint action selection algorithm with two collaborative model-free methods, including sparse cooperative Q-learning (SparseQ) and relative sparse cooperative Q-learning (RSparseQ), is utilized to control multi-intersection networks. Extensive experiments are carried out, and their results demonstrate the effectiveness of our proposed framework. In comparison with independent Q-learning agents, our proposed framework achieves superior performance in terms of vehicle trip time, waiting time and jam length. In addition, the reported results show that the proposed RSparseQ outperforms SparseQ in avoiding vehicles teleports, which leads to better driver satisfaction.
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