城市交通信号控制的分布式多智能体2型模糊体系结构

Balaji Parasumanna Gokulan, D. Srinivasan
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引用次数: 13

摘要

汽车技术的快速进步和城市化水平的提高导致道路交通拥堵程度呈指数级增长。这就需要智能交通响应信号控制器的实施,该控制器能够维持每个链路的饱和水平,从而减少拥堵并提高现有基础设施的利用率。本文提出了一种基于加权型2模糊推理机的分布式多智能体体系结构,用于城市交通信号控制。在PARAMICS微观交通模拟器中对agent进行了编程,并在新加坡中央商务区的一个模拟路段进行了测试,该路段有25个相互连接的十字路口。针对两种不同的交通场景,将所提出的体系结构与现有的交通信号控制器HMS (Hierarchical multi-agent system)进行了对比分析。结果清楚地表明,所提出的代理体系结构比基准控制器具有更好的性能,并为将来的改进提供了空间。
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Distributed multi-agent type-2 fuzzy architecture for urban traffic signal control
Rapid advances made in vehicle technology and increased level of urbanization have caused an exponential increase in road traffic congestion levels. This has necessitated the implementation of intelligent traffic responsive signal controllers capable of maintaining the saturation levels in each link thereby reducing congestion and increasing utilization of existing infrastructure. This paper presents one such distributed multi-agent architecture based on weighted type-2 fuzzy inference engine for the urban traffic signal control. Agents have been programmed in PARAMICS microscopic traffic simulator and tested on a simulated section of Central Business District in Singapore with twenty five interconnected intersections. A comparative analysis of the proposed architecture with the existing traffic signal controller HMS - Hierarchical multi-agent system, was performed for two different traffic scenarios. The results clearly indicates better performance of the proposed agent architecture over the benchmark controller and offers scope for improvement in the future.
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