Optimizing traffic flow with Q-learning and genetic algorithm for congestion control

被引:2
|
作者
Deepika, Gitanjali [1 ]
Pandove, Gitanjali [1 ]
机构
[1] DCRUST, Dept Elect & Commun Engn, Sonepat 131039, Haryana, India
关键词
Congestion; Vehicle dynamic; Genetic algorithms; Traffic light optimization; Q-learning; Wait-time;
D O I
10.1007/s12065-024-00978-9
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Traffic congestion in urban areas presents significant challenges, adversely affecting economic productivity, public health, and overall quality of life. Efficient coordination of traffic signals emerges as a crucial strategy to mitigate these impacts. This paper introduces an innovative approach to traffic management by leveraging Q-learning and Genetic Algorithms (GAs) to optimize traffic light schedules, aiming to reduce vehicle waiting times at intersections. The approach proposed in this study is implemented in a sophisticated simulation environment, facilitated by the python-traffic simulator platform, leveraging real-time data. Uniquely, in this paper, Q-Learning implementation incorporates a novel yet redundant random shuffling of action values in the value determination process, which differs from standard Q-learning approaches. Through a comparative analysis, we evaluated the performance of these advanced methodologies against the default traffic light control behavior. The proposed algorithm demonstrated a substantial improvement, reducing average vehicle waiting time. The research thoroughly assesses the performance of simulation outcomes under various scenarios, examining episodes in batches of 20, 50 and 100. The method exhibits notable improvements over traditional traffic control algorithms. It reduces the average wait time by approximately 12.54% compared to the default fixed cycle method. Also showcases a significant reduction in the average wait time by approximately 10.39% with the second method (longest queue first). In comparison to the third method (search algorithm) the proposed method demonstrates an appreciable decrease in the average wait time by approximately 6.09%. These findings underscore the potential of applying machine learning and evolutionary computation techniques to enhance traffic flow efficiency, suggesting a scalable solution for urban traffic management challenges.
引用
收藏
页码:4179 / 4197
页数:19
相关论文
共 50 条
  • [41] Q-learning Algorithm Based Multi-Agent Coordinated Control Method for Microgrids
    Xi, Yuanyuan
    Chang, Liuchen
    Mao, Meiqin
    Jin, Peng
    Hatziargyriou, Nikos
    Xu, Haibo
    2015 9TH INTERNATIONAL CONFERENCE ON POWER ELECTRONICS AND ECCE ASIA (ICPE-ECCE ASIA), 2015, : 1497 - 1504
  • [42] Simulation for Path Planning of Autonomous Underwater Vehicle Using Flower Pollination Algorithm, Genetic Algorithm and Q-Learning
    Gautam, Utkarsh
    Malmathanraj, R.
    Srivastav, Chhavi
    2015 INTERNATIONAL CONFERENCE ON COGNITIVE COMPUTING AND INFORMATION PROCESSING (CCIP), 2015,
  • [43] Integration of Parallel Genetic Algorithm and Q-learning for QoS-aware Web Service Composition
    Elsayed, Doaa H.
    Gheith, Mervat H.
    Nasr, Eman S.
    El Ghazali, Alaa El Din M.
    2017 12TH INTERNATIONAL CONFERENCE ON COMPUTER ENGINEERING AND SYSTEMS (ICCES), 2017, : 221 - 226
  • [44] Congestion-aware Data Acquisition with Q-learning for Wireless Sensor Networks
    Donta, Praveen Kumar
    Amgoth, Tarachand
    Annavarapu, Chandra Sekhara Rao
    2020 IEEE INTERNATIONAL IOT, ELECTRONICS AND MECHATRONICS CONFERENCE (IEMTRONICS 2020), 2020, : 430 - 435
  • [45] Accommodating misclassification effects on optimizing dynamic treatment regimes with Q-learning
    Charvadeh, Yasin Khadem
    Yi, Grace Y.
    STATISTICS IN MEDICINE, 2024, 43 (03) : 578 - 605
  • [46] A Methodology Based on Deep Q-Learning/Genetic Algorithms for Optimizing COVID-19 Pandemic Government Actions
    Miralles-Pechuan, Luis
    Jimenez, Fernando
    Ponce, Hiram
    Martinez-Villasenor, L.
    CIKM '20: PROCEEDINGS OF THE 29TH ACM INTERNATIONAL CONFERENCE ON INFORMATION & KNOWLEDGE MANAGEMENT, 2020, : 1135 - 1144
  • [47] An inverse reinforcement learning framework with the Q-learning mechanism for the metaheuristic algorithm
    Zhao, Fuqing
    Wang, Qiaoyun
    Wang, Ling
    KNOWLEDGE-BASED SYSTEMS, 2023, 265
  • [48] ETQ-learning: an improved Q-learning algorithm for path planning
    Wang, Huanwei
    Jing, Jing
    Wang, Qianlv
    He, Hongqi
    Qi, Xuyan
    Lou, Rui
    INTELLIGENT SERVICE ROBOTICS, 2024, 17 (04) : 915 - 929
  • [49] Traffic Control Based on Integrated Kalman Filtering and Adaptive Quantized Q-Learning Framework for Internet of Vehicles
    Al-Heety, Othman S.
    Zakaria, Zahriladha
    Abu-Khadrah, Ahmed
    Ismail, Mahamod
    Mahmood, Sarmad Nozad
    Shakir, Mohammed Mudhafar
    Alani, Sameer
    Alsariera, Hussein
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2024, 138 (03): : 2103 - 2127
  • [50] Large-Scale Traffic Signal Control Based on Multi-Agent Q-Learning and Pressure
    Qi, Liang
    Sun, Yuanzhen
    Luan, Wenjing
    IEEE ACCESS, 2024, 12 (1092-1101) : 1092 - 1101