Robustness of Reinforcement Learning-Based Traffic Signal Control under Incidents: A Comparative Study
Robustness of Reinforcement Learning-Based Traffic Signal Control under Incidents: A Comparative Study
Reinforcement learning-based traffic signal control (RL-TSC) has emerged as a promising approach for improving urban mobility. However, its robustness under real-world disruptions such as traffic incidents remains largely underexplored. In this study, we introduce T-REX, an open-source, SUMO-based simulation framework for training and evaluating RL-TSC methods under dynamic, incident scenarios. T-REX models realistic network-level performance considering drivers' probabilistic rerouting, speed adaptation, and contextual lane-changing, enabling the simulation of congestion propagation under incidents. To assess robustness, we propose a suite of metrics that extend beyond conventional traffic efficiency measures. Through extensive experiments across synthetic and real-world networks, we showcase T-REX for the evaluation of several state-of-the-art RL-TSC methods under multiple real-world deployment paradigms. Our findings show that while independent value-based and decentralized pressure-based methods offer fast convergence and generalization in stable traffic conditions and homogeneous networks, their performance degrades sharply under incident-driven distribution shifts. In contrast, hierarchical coordination methods tend to offer more stable and adaptable performance in large-scale, irregular networks, benefiting from their structured decision-making architecture. However, this comes with the trade-off of slower convergence and higher training complexity. These findings highlight the need for robustness-aware design and evaluation in RL-TSC research. T-REX contributes to this effort by providing an open, standardized and reproducible platform for benchmarking RL methods under dynamic and disruptive traffic scenarios.
Dang Viet Anh Nguyen、Carlos Lima Azevedo、Tomer Toledo、Filipe Rodrigues
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Dang Viet Anh Nguyen,Carlos Lima Azevedo,Tomer Toledo,Filipe Rodrigues.Robustness of Reinforcement Learning-Based Traffic Signal Control under Incidents: A Comparative Study[EB/OL].(2025-06-16)[2025-07-02].https://arxiv.org/abs/2506.13836.点此复制
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