Optimizing traffic signal control (TSC) at intersections continues to pose a challenging problem, particularly for large-scale traffic networks. It has been shown in past research that it is feasible to optimize the operations of individual TSC systems or a small number of such systems. However, it has been computationally difficult to scale these solution approaches to large networks partly due to the curse of dimensionality that is encountered as the number of intersections increases. Fortunately, recent studies have recognized the potential of exploiting advancements in deep and reinforcement learning to address this problem, and some preliminary successes have been achieved in this regard. However, facilitating such intelligent solution approaches may require large amounts of infrastructural investments such as roadside units (RSUs) and drones in order to ensure thorough connectivity across all intersections in large networks, an investment that may be burdensome for agencies to undertake. As such, this study builds on recent work to present a scalable TSC model that may reduce the number of required enabling infrastructure. This is achieved using graph attention networks (GATs) to serve as the neural network for deep reinforcement learning, which aids in maintaining the graph topology of the traffic network while disregarding any irrelevant or unnecessary information. A case study is carried out to demonstrate the effectiveness of the proposed model, and the results show much promise. The overall research outcome suggests that by decomposing large networks using fog-nodes, the proposed fog-based graphic RL (FG-RL) model can be easily applied to scale into larger traffic networks.
翻译:在十字路口优化交通信号控制(TSC)继续构成一个具有挑战性的问题,对大型交通网络来说尤其如此,但以往的研究显示,促进这类智能解决方案方法可能需要大量基础设施投资,例如路边单位和无人驾驶飞机等,以确保大型网络所有交叉点之间的全面连通性,而这种投资可能给各机构造成负担。因此,这项研究以最近的工作为基础,提出了一个可扩缩的TSC模型,可能减少所需的辅助基础设施的数量。实现这一目的的办法是利用基于图形的注意网络,作为深度强化学习的神经网络(GATs),这种网络有助于维持流动网络的图示表层,同时利用不相干的结果显示不相关的结果。