Traffic signal control is a challenging real-world problem aiming to minimize overall travel time by coordinating vehicle movements at road intersections. Existing traffic signal control systems in use still rely heavily on oversimplified information and rule-based methods. Specifically, the periodicity of green/red light alternations can be considered as a prior for better planning of each agent in policy optimization. To better learn such adaptive and predictive priors, traditional RL-based methods can only return a fixed length from predefined action pool with only local agents. If there is no cooperation between these agents, some agents often make conflicts to other agents and thus decrease the whole throughput. This paper proposes a cooperative, multi-objective architecture with age-decaying weights to better estimate multiple reward terms for traffic signal control optimization, which termed COoperative Multi-Objective Multi-Agent Deep Deterministic Policy Gradient (COMMA-DDPG). Two types of agents running to maximize rewards of different goals - one for local traffic optimization at each intersection and the other for global traffic waiting time optimization. The global agent is used to guide the local agents as a means for aiding faster learning but not used in the inference phase. We also provide an analysis of solution existence together with convergence proof for the proposed RL optimization. Evaluation is performed using real-world traffic data collected using traffic cameras from an Asian country. Our method can effectively reduce the total delayed time by 60\%. Results demonstrate its superiority when compared to SoTA methods.
翻译:协调道路交叉路口的车辆移动,以尽量减少整个旅行时间为目的的交通信号控制系统仍然严重依赖过于简化的信息和基于规则的方法。具体地说,绿色/红光交替的周期可以被视为在政策优化中更好地规划每个代理器的先行。为了更好地学习这种适应性和预测性的先行,传统的RL方法只能从预先确定的行动池中返回固定长度,只有当地代理器。如果这些代理器之间没有合作,一些代理器往往与其他代理器发生冲突,从而减少整个吞吐量。本文建议建立一个具有年龄减低重量的合作性多目标结构,以更好地估计交通信号控制优化的多种奖励条件,这称为“多目标多目标多指标性深度威慑政策”(COMMA-DPG)的周期。两种类型的代理器只能从预先界定的行动池中返回一个固定长度的回报,即每个交叉器器器体的当地交通优化,另一个用于全球交通优化。我们用全球代理器指导地方代理器指导当地代理器,作为一种手段,帮助更快地加速学习交通信号优化,而不是在现实阶段使用一种数据优化分析方法来进行。我们收集的交通升级。我们的数据分析,可以减少整个交通升级的方法。我们使用。