Bayesian Critique-Tune-Based Reinforcement Learning with Adaptive Pressure for Multi-Intersection Traffic Signal Control
Wenchang Duan, Zhenguo Gao, Jiwan He, Jinguo Xian

TL;DR
This paper introduces BCT-APLight, a novel reinforcement learning framework with Bayesian critique and adaptive pressure mechanisms, significantly improving traffic signal control efficiency at multi-intersection urban areas.
Contribution
It proposes a Bayesian critique-tune framework combined with an adaptive pressure mechanism to refine RL policies for multi-intersection traffic control.
Findings
Reduces average queue length by 9.60%
Decreases average waiting time by 15.28%
Outperforms state-of-the-art methods on real-world datasets
Abstract
Adaptive Traffic Signal Control (ATSC) system is a critical component of intelligent transportation, with the capability to significantly alleviate urban traffic congestion. Although reinforcement learning (RL)-based methods have demonstrated promising performance in achieving ATSC, existing methods are still prone to making unreasonable policies. Therefore, this paper proposes a novel Bayesian Critique-Tune-Based Reinforcement Learning with Adaptive Pressure for multi-intersection signal control (BCT-APLight). In BCT-APLight, the Critique-Tune (CT) framework, a two-layer Bayesian structure is designed to refine the excessive trust of RL policies. Specifically, the Bayesian inference-based Critique Layer provides effective evaluations of the credibility of policies; the Bayesian decision-based Tune Layer fine-tunes policies by minimizing the posterior risks when the evaluations are…
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Taxonomy
TopicsTraffic control and management · Traffic Prediction and Management Techniques · Elevator Systems and Control
