Adaptive Multi-Agent Deep Mixed Reinforcement Learning for Traffic Light Control

被引:4
|
作者
Li, Lulu [1 ]
Zhu, Ruijie [1 ]
Wu, Shuning [1 ]
Ding, Wenting [1 ]
Xu, Mingliang [1 ]
Lu, Jiwen [2 ]
机构
[1] Zhengzhou Univ, Sch Comp & Artificial Intelligence, Zhengzhou 450001, Peoples R China
[2] Tsinghua Univ, Beijing Natl Res Ctr Informat Sci & Technol BNRIST, Dept Automat, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
Traffic light control (TLC); multi-type of intersections (MTIs); value decomposition; multi-agent deep reinforcement learning (MADRL);
D O I
10.1109/TVT.2023.3319698
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Despite significant advancements in Multi-Agent Deep Reinforcement Learning (MADRL) approaches for Traffic Light Control (TLC), effectively coordinating agents in diverse traffic environments remains a challenge. Studies in MADRL for TLC often focus on repeatedly constructing the same intersection models with sparse experience. However, real road networks comprise Multi-Type of Intersections (MTIs) rather than being limited to intersections with four directions. In the scenario with MTIs, each type of intersection exhibits a distinctive topology structure and phase set, leading to disparities in the spaces of state and action. This article introduces Adaptive Multi-agent Deep Mixed Reinforcement Learning (AMDMRL) for addressing tasks with multiple types of intersections in TLC. AMDMRL adopts a two-level hierarchy, where high-level proxies guide low-level agents in decision-making and updating. All proxies are updated by value decomposition to obtain the globally optimal policy. Moreover, the AMDMRL approach incorporates a mixed cooperative mechanism to enhance cooperation among agents, which adopts a mixed encoder to aggregate the information from correlated agents. We conduct comparative experiments involving four traditional and four DRL-based approaches, utilizing three training and four testing datasets. The results indicate that the AMDMRL approach achieves average reductions of 41% than traditional approaches, and 16% compared to DRL-based approaches in traveling time on three training datasets. During testing, the AMDMRL approach exhibits a 37% improvement in reward compared to the MADRL-based approaches.
引用
收藏
页码:1803 / 1816
页数:14
相关论文
共 50 条
  • [31] Multi-Agent Deep Reinforcement Learning for Cooperative Driving in Crowded Traffic Scenarios
    Park, Jongwon
    Min, Kyushik
    Huh, Kunsoo
    2019 INTERNATIONAL SYMPOSIUM ON INTELLIGENT SIGNAL PROCESSING AND COMMUNICATION SYSTEMS (ISPACS), 2019,
  • [32] Multi-agent reinforcement learning with adaptive mimetism
    Yamaguchi, T
    Miura, M
    Yachida, M
    ETFA '96 - 1996 IEEE CONFERENCE ON EMERGING TECHNOLOGIES AND FACTORY AUTOMATION, PROCEEDINGS, VOLS 1 AND 2, 1996, : 288 - 294
  • [33] Fairness-aware multi-agent reinforcement learning and visual perception for adaptive traffic signal control
    FANG Wanqing
    ZHAO Xintian
    ZHANG Chengwei
    Optoelectronics Letters, 2024, 20 (12) : 764 - 768
  • [34] Fairness-aware multi-agent reinforcement learning and visual perception for adaptive traffic signal control
    Fang, Wanqing
    Zhao, Xintian
    Zhang, Chengwei
    OPTOELECTRONICS LETTERS, 2024, 20 (12) : 764 - 768
  • [35] HALFTONING WITH MULTI-AGENT DEEP REINFORCEMENT LEARNING
    Jiang, Haitian
    Xiong, Dongliang
    Jiang, Xiaowen
    Yin, Aiguo
    Ding, Li
    Huang, Kai
    2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 641 - 645
  • [36] Deep reinforcement learning for multi-agent interaction
    Ahmed, Ibrahim H.
    Brewitt, Cillian
    Carlucho, Ignacio
    Christianos, Filippos
    Dunion, Mhairi
    Fosong, Elliot
    Garcin, Samuel
    Guo, Shangmin
    Gyevnar, Balint
    McInroe, Trevor
    Papoudakis, Georgios
    Rahman, Arrasy
    Schafer, Lukas
    Tamborski, Massimiliano
    Vecchio, Giuseppe
    Wang, Cheng
    Albrecht, Stefano, V
    AI COMMUNICATIONS, 2022, 35 (04) : 357 - 368
  • [37] Multi-agent deep reinforcement learning: a survey
    Sven Gronauer
    Klaus Diepold
    Artificial Intelligence Review, 2022, 55 : 895 - 943
  • [38] Deep Multi-Agent Reinforcement Learning: A Survey
    Liang X.-X.
    Feng Y.-H.
    Ma Y.
    Cheng G.-Q.
    Huang J.-C.
    Wang Q.
    Zhou Y.-Z.
    Liu Z.
    Zidonghua Xuebao/Acta Automatica Sinica, 2020, 46 (12): : 2537 - 2557
  • [39] Micro Junction Agent: A Scalable Multi-agent Reinforcement Learning Method for Traffic Control
    Choi, BumKyu
    Choe, Jean Seong Bjorn
    Kim, Jong-kook
    ICAART: PROCEEDINGS OF THE 14TH INTERNATIONAL CONFERENCE ON AGENTS AND ARTIFICIAL INTELLIGENCE - VOL 3, 2022, : 509 - 515
  • [40] Lenient Multi-Agent Deep Reinforcement Learning
    Palmer, Gregory
    Tuyls, Karl
    Bloembergen, Daan
    Savani, Rahul
    PROCEEDINGS OF THE 17TH INTERNATIONAL CONFERENCE ON AUTONOMOUS AGENTS AND MULTIAGENT SYSTEMS (AAMAS' 18), 2018, : 443 - 451