Combining Neural Gas and Reinforcement Learning for Adaptive Traffic Signal Control

被引:0
|
作者
Miletic, Mladen [1 ]
Ivanjko, Edouard [1 ]
Mandzuka, Sadko [1 ]
Necoska, Daniela Koltovska [2 ]
机构
[1] Univ Zagreb, Fac Transport & Traff Sci, Vukeliceva 4, HR-10000 Zagreb, Croatia
[2] St Kliment Ohridski Univ Bitola, Fac Tech Sci, Blvd 1st May Bb, Bitola 7000, North Macedonia
关键词
Intelligent Transportation Systems; Adaptive Traffic Signal Control; Reinforcement Learning; Growing Neural Gas; Machine Learning;
D O I
10.1109/ELMAR52657.2021.9550948
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Travel time of vehicles in urban traffic networks can be reduced by using Adaptive Traffic Signal Control (ATSC) to change the signal program according to the current traffic situation. Modern ATSC approaches based on Reinforcement Learning (RL) can learn the optimal signal control policy. While there are multiple RL based ATSC implementations available, most suffer from high state-action complexity leading to slow convergence and long training time. In this paper, the state-action complexity of ATSC based RL is reduced by implementing Growing Neural Gas learning structure as an integral part of RL, leading to high convergence rate and system stability. The presented approach is evaluated on a simulated signalized intersection, and compared with self-organizing map RL-based ATSC systems. Obtained results prove that the reduction of state-action complexity in this manner improves the effectiveness of RL based ATSC not needing to have an a priory analysis of needed number of neurons for state representation.
引用
收藏
页码:179 / 182
页数:4
相关论文
共 50 条
  • [41] Federated Reinforcement Learning for Adaptive Traffic Signal Control: A Case Study in New York City
    Fu, Yongjie
    Di, Xuan
    [J]. 2023 IEEE 26TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS, ITSC, 2023, : 5738 - 5743
  • [42] Reinforcement learning vs. rule-based adaptive traffic signal control: A Fourier basis linear function approximation for traffic signal control
    Ziemke, Theresa
    Alegre, Lucas N.
    Bazzan, Ana L. C.
    [J]. AI COMMUNICATIONS, 2021, 34 (01) : 89 - 103
  • [43] Adaptive Optimization of Traffic Signal Timing via Deep Reinforcement Learning
    Ma, Zibo
    Cui, Tongchao
    Deng, Wenxing
    Jiang, Fengyao
    Zhang, Liguo
    [J]. JOURNAL OF ADVANCED TRANSPORTATION, 2021, 2021
  • [44] Adaptive traffic signal management method combining deep learning and simulation
    Kawai Mok
    Liming Zhang
    [J]. Multimedia Tools and Applications, 2024, 83 : 15439 - 15459
  • [45] Adaptive traffic signal management method combining deep learning and simulation
    Mok, Kawai
    Zhang, Liming
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (05) : 15439 - 15459
  • [46] A Regional Traffic Signal Control Strategy with Deep Reinforcement Learning
    Li, Congcong
    Yan, Fei
    Zhou, Yiduo
    Wu, Jia
    Wang, Xiaomin
    [J]. 2018 37TH CHINESE CONTROL CONFERENCE (CCC), 2018, : 7690 - 7695
  • [47] Reinforcement Learning for Traffic Signal Control in Hybrid Action Space
    Luo, Haoqing
    Bie, Yiming
    Jin, Sheng
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (06) : 5225 - 5241
  • [48] A Deep Reinforcement Learning Approach for Fair Traffic Signal Control
    Raeis, Majid
    Leon-Garcia, Alberto
    [J]. 2021 IEEE INTELLIGENT TRANSPORTATION SYSTEMS CONFERENCE (ITSC), 2021, : 2512 - 2518
  • [49] A Survey on Reinforcement Learning Models and Algorithms for Traffic Signal Control
    Yau, Kok-Lim Alvin
    Qadir, Junaid
    Khoo, Hooi Ling
    Ling, Mee Hong
    Komisarczuk, Peter
    [J]. ACM COMPUTING SURVEYS, 2017, 50 (03)
  • [50] Implementing Traffic Signal Optimal Control by Multiagent Reinforcement Learning
    Song, Jiong
    Jin, Zhao
    Zhu, WenJun
    [J]. 2011 INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND NETWORK TECHNOLOGY (ICCSNT), VOLS 1-4, 2012, : 2578 - 2582