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A group-based traffic signal control with adaptive learning ability

机译:具有自适应学习能力的基于组的交通信号灯控制

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摘要

Group-based control is an advanced traffic signal strategy capable of dynamically generating phase sequences at intersection. Combined with the phasing scheme, vehicle actuated timing is often adopted to respond to the detected traffic. However, the parameters of a signal controller are often predetermined in practice, and the control performance may suffer from deterioration when dealing with highly fluctuating traffic demand. This study proposes a group-based signal control approach capable of making decisions based on its understanding of traffic conditions at the intersection level. In particular, the control problem is formulated using a framework of stochastic optimal control for multi-agent system in which each signal group is modeled as an intelligent agent. The agents learn how to react to traffic environment and make optimal timing decisions according to the perceived system states. Reinforcement learning, enhanced by multiple-step backups, is applied as the kernel of the intelligent control algorithm, where each agent updates its knowledge on-line based on a sequence of states during the process. In addition, the proposed system is designated to be compatible with the prevailing signal system. A case study was carried out in a simulation environment to compare the proposed control approach with a benchmark controller used in practice, group-based vehicle actuated (GBVA) controller, whose parameters were off-line optimized using a genetic algorithm. Simulation results show that the proposed adaptive group-based control system outperforms the optimized GBVA control system mainly because of its real-time adaptive learning capacity in response to the changes of traffic demand.
机译:基于组的控制是一种高级交通信号灯策略,能够动态生成交叉路口的相序。结合定相方案,通常采用车辆启动定时来响应检测到的交通。然而,实际上,信号控制器的参数通常是预先确定的,并且在应对高度波动的交通需求时,控制性能可能会恶化。这项研究提出了一种基于群体的信号控制方法,该方法能够基于其对交叉路口交通状况的理解来做出决策。特别是,使用多智能体系统的随机最优控制框架来制定控制问题,其中每个信号组都被建模为智能智能体。代理学习如何对流量环境做出反应,并根据感知到的系统状态做出最佳时序决策。通过多步备份增强的强化学习被用作智能控制算法的内核,其中每个代理根据过程中的一系列状态在线更新其知识。另外,提议的系统被指定为与流行的信号系统兼容。在模拟环境中进行了案例研究,以将建议的控制方法与实际使用的基准控制器,基于组的车辆致动(GBVA)控制器进行比较,该控制器的参数已使用遗传算法离线优化。仿真结果表明,所提出的基于自适应群的控制系统优于优化的GBVA控制系统,主要是因为其能够实时响应交通需求变化的自适应学习能力。

著录项

  • 作者

    Jin, Junchen; Ma, Xiaoliang;

  • 作者单位
  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 eng
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