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Adaptive Broad Deep Reinforcement Learning for Intelligent Traffic Light Control

Ruijie Zhu, Shuning Wu, Lulu Li, Wenting Ding, Ping Lv, Luyao Sui

2024IEEE Internet of Things Journal15 citationsDOI

Abstract

Deep reinforcement learning (DRL) has superior autonomous decision-making capabilities, combining deep learning and reinforcement learning (RL). Unlike DRL employs deep neural networks (DNNs), broad RL (BRL) adopts the broad learning system (BLS) that is established with flat networks to generate the strategy. This article proposes the multiagent adaptive broad-DRL (ABDRL) approach for traffic light control (TLC), which combines the broad network with the deep network structure. Specifically, the structure of ABDRL first expands in the form of flatted broad networks. Then, the feature representation module that contains DNNs is employed to extract the critical traffic information. In addition, experiences sampled randomly by the experience replay mechanism cannot reflect the current training status of the agent effectively. In order to alleviate the impacts caused by random sampling, the forgetful experience mechanism (FEM) is incorporated into ABDRL. The FEM enables the agent to discriminate the importance of experiences stored in the experience reply buffer to improve robustness and adaptability. We validate the effectiveness of ABDRL in TLC, and the results illustrate the optimality and robustness of ABDRL over the state-of-the-art multiagent DRL (MADRL) algorithms.

Topics & Concepts

Computer scienceReinforcement learningAdaptive controlTraffic signalArtificial intelligenceControl (management)Computer networkReal-time computingTraffic control and managementElevator Systems and ControlTraffic Prediction and Management Techniques
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