Reinforcement Learning With Function Approximation for Traffic Signal Control

被引:230
|
作者
Prashanth, L. A. [1 ]
Bhatnagar, Shalabh [1 ]
机构
[1] Indian Inst Sci, Dept Comp Sci & Automat, Bangalore 560012, Karnataka, India
关键词
Q-learning with full-state representation (QTLC-FS); Q-learning with function approximation (QTLC-FA); reinforcement learning (RL); traffic signal control; REAL-TIME; NETWORKS; DESIGN;
D O I
10.1109/TITS.2010.2091408
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
We propose, for the first time, a reinforcement learning (RL) algorithm with function approximation for traffic signal control. Our algorithm incorporates state-action features and is easily implementable in high-dimensional settings. Prior work, e. g., the work of Abdulhai et al., on the application of RL to traffic signal control requires full-state representations and cannot be implemented, even in moderate-sized road networks, because the computational complexity exponentially grows in the numbers of lanes and junctions. We tackle this problem of the curse of dimensionality by effectively using feature-based state representations that use a broad characterization of the level of congestion as low, medium, or high. One advantage of our algorithm is that, unlike prior work based on RL, it does not require precise information on queue lengths and elapsed times at each lane but instead works with the aforementioned described features. The number of features that our algorithm requires is linear to the number of signaled lanes, thereby leading to several orders of magnitude reduction in the computational complexity. We perform implementations of our algorithm on various settings and show performance comparisons with other algorithms in the literature, including the works of Abdulhai et al. and Cools et al., as well as the fixed-timing and the longest queue algorithms. For comparison, we also develop an RL algorithm that uses full-state representation and incorporates prioritization of traffic, unlike the work of Abdulhai et al. We observe that our algorithm outperforms all the other algorithms on all the road network settings that we consider.
引用
收藏
页码:412 / 421
页数:10
相关论文
共 50 条
  • [41] Uniformity of markov elements in deep reinforcement learning for traffic signal control
    Ye, Bao-Lin
    Wu, Peng
    Li, Lingxi
    Wu, Weimin
    ELECTRONIC RESEARCH ARCHIVE, 2024, 32 (06): : 3843 - 3866
  • [42] Reinforcement Learning Approaches for Traffic Signal Control under Missing Data
    Mei, Hao
    Li, Junxian
    Shi, Bin
    Wei, Hua
    PROCEEDINGS OF THE THIRTY-SECOND INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2023, 2023, : 2261 - 2269
  • [43] Effective Traffic Signal Control with Offline-to-Online Reinforcement Learning
    Ma, Jinming
    Wu, Feng
    2023 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2023, : 5567 - 5573
  • [44] Adaptive Traffic Signal Control Method Based on Offline Reinforcement Learning
    Wang, Lei
    Wang, Yu-Xuan
    Li, Jian-Kang
    Liu, Yi
    Pi, Jia-Tian
    APPLIED SCIENCES-BASEL, 2024, 14 (22):
  • [45] Deep Reinforcement Learning for Traffic Signal Control Model and Adaptation Study
    Tan, Jiyuan
    Yuan, Qian
    Guo, Weiwei
    Xie, Na
    Liu, Fuyu
    Wei, Jing
    Zhang, Xinwei
    SENSORS, 2022, 22 (22)
  • [46] A Reinforcement Learning Based Adaptive Traffic Signal Control for Vehicular Networks
    Krishnendhu, S. P.
    Reddy, Mainampati Vigneshwari
    Basumatary, Thulunga
    Mohandas, Prabu
    PERVASIVE COMPUTING AND SOCIAL NETWORKING, ICPCSN 2022, 2023, 475 : 547 - 561
  • [47] Combining Neural Gas and Reinforcement Learning for Adaptive Traffic Signal Control
    Miletic, Mladen
    Ivanjko, Edouard
    Mandzuka, Sadko
    Necoska, Daniela Koltovska
    PROCEEDINGS OF 63RD INTERNATIONAL SYMPOSIUM ELMAR-2021, 2021, : 179 - 182
  • [48] A Reinforcement Learning Approach for Intelligent Traffic Signal Control at Urban Intersections
    Guo, Mengyu
    Wang, Pin
    Chan, Ching-Yao
    Askary, Sid
    2019 IEEE INTELLIGENT TRANSPORTATION SYSTEMS CONFERENCE (ITSC), 2019, : 4242 - 4247
  • [49] Improving Traffic Signal Control With Joint-Action Reinforcement Learning
    Labres, Joao V. B.
    Bazzan, Ana L. C.
    Abdoos, Monireh
    2021 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI 2021), 2021,
  • [50] An effective deep reinforcement learning approach for adaptive traffic signal control
    Yu, Mingrui
    Chai, Jaijun
    Lv, Yisheng
    Xiong, Gang
    2020 CHINESE AUTOMATION CONGRESS (CAC 2020), 2020, : 6419 - 6425