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Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization

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Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization. / Gong, Yunhai; Zhong, Shaopeng; Zhao, Shengchuan et al.
In: Computer-Aided Civil and Infrastructure Engineering, Vol. 40, No. 6, 28.02.2025, p. 741-763.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Gong, Y, Zhong, S, Zhao, S, Xiao, F, Wang, W & Jiang, Y 2025, 'Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization', Computer-Aided Civil and Infrastructure Engineering, vol. 40, no. 6, pp. 741-763. https://doi.org/10.1111/mice.13293

APA

Gong, Y., Zhong, S., Zhao, S., Xiao, F., Wang, W., & Jiang, Y. (2025). Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization. Computer-Aided Civil and Infrastructure Engineering, 40(6), 741-763. https://doi.org/10.1111/mice.13293

Vancouver

Gong Y, Zhong S, Zhao S, Xiao F, Wang W, Jiang Y. Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization. Computer-Aided Civil and Infrastructure Engineering. 2025 Feb 28;40(6):741-763. Epub 2024 Jul 8. doi: 10.1111/mice.13293

Author

Gong, Yunhai ; Zhong, Shaopeng ; Zhao, Shengchuan et al. / Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization. In: Computer-Aided Civil and Infrastructure Engineering. 2025 ; Vol. 40, No. 6. pp. 741-763.

Bibtex

@article{df3b8085caf14e74abaa692010a4b1fb,
title = "Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization",
abstract = "Centralized traffic signal control has long been a challenging, high‐dimensional optimization problem. This study establishes a simulation‐based optimization framework and develops a novel optimization algorithm based on trust region Bayesian optimization (TuRBO), which can efficiently obtain an approximate optimal solution to the high‐dimensional traffic signal control problem. Local Gaussian process (GP), trust region, and Thompson sampling are employed in the TuRBO and contribute considerably to performance in terms of computational speed, solution quality, and scalability. Empirical studies are carried out using data from Mudanjiang and Chengdu, China. The performance of TuRBO is compared with that of Bayesian optimization (BO), genetic algorithm and random sampling. The results show that TuRBO converges the fastest because of its ability to balance exploration and exploitation through the trust region and Thompson sampling. Meanwhile, because TuRBO enables more efficient exploitation through the local GP, the solution quality of TuRBO outperforms others significantly. The average waiting time achieved by TuRBO was 2.84% lower than that achieved by BO. Finally, the method has been successfully extended to a large network with 233‐dimensional spaces and 122 signalized intersections, demonstrating that the developed methodology can deal with high‐dimensional traffic signal control effectively for real case applications.",
author = "Yunhai Gong and Shaopeng Zhong and Shengchuan Zhao and Feng Xiao and Wenwen Wang and Yu Jiang",
year = "2025",
month = feb,
day = "28",
doi = "10.1111/mice.13293",
language = "English",
volume = "40",
pages = "741--763",
journal = "Computer-Aided Civil and Infrastructure Engineering",
issn = "1093-9687",
publisher = "WILEY-BLACKWELL",
number = "6",

}

RIS

TY - JOUR

T1 - Optimizing green splits in high‐dimensional traffic signal control with trust region Bayesian optimization

AU - Gong, Yunhai

AU - Zhong, Shaopeng

AU - Zhao, Shengchuan

AU - Xiao, Feng

AU - Wang, Wenwen

AU - Jiang, Yu

PY - 2025/2/28

Y1 - 2025/2/28

N2 - Centralized traffic signal control has long been a challenging, high‐dimensional optimization problem. This study establishes a simulation‐based optimization framework and develops a novel optimization algorithm based on trust region Bayesian optimization (TuRBO), which can efficiently obtain an approximate optimal solution to the high‐dimensional traffic signal control problem. Local Gaussian process (GP), trust region, and Thompson sampling are employed in the TuRBO and contribute considerably to performance in terms of computational speed, solution quality, and scalability. Empirical studies are carried out using data from Mudanjiang and Chengdu, China. The performance of TuRBO is compared with that of Bayesian optimization (BO), genetic algorithm and random sampling. The results show that TuRBO converges the fastest because of its ability to balance exploration and exploitation through the trust region and Thompson sampling. Meanwhile, because TuRBO enables more efficient exploitation through the local GP, the solution quality of TuRBO outperforms others significantly. The average waiting time achieved by TuRBO was 2.84% lower than that achieved by BO. Finally, the method has been successfully extended to a large network with 233‐dimensional spaces and 122 signalized intersections, demonstrating that the developed methodology can deal with high‐dimensional traffic signal control effectively for real case applications.

AB - Centralized traffic signal control has long been a challenging, high‐dimensional optimization problem. This study establishes a simulation‐based optimization framework and develops a novel optimization algorithm based on trust region Bayesian optimization (TuRBO), which can efficiently obtain an approximate optimal solution to the high‐dimensional traffic signal control problem. Local Gaussian process (GP), trust region, and Thompson sampling are employed in the TuRBO and contribute considerably to performance in terms of computational speed, solution quality, and scalability. Empirical studies are carried out using data from Mudanjiang and Chengdu, China. The performance of TuRBO is compared with that of Bayesian optimization (BO), genetic algorithm and random sampling. The results show that TuRBO converges the fastest because of its ability to balance exploration and exploitation through the trust region and Thompson sampling. Meanwhile, because TuRBO enables more efficient exploitation through the local GP, the solution quality of TuRBO outperforms others significantly. The average waiting time achieved by TuRBO was 2.84% lower than that achieved by BO. Finally, the method has been successfully extended to a large network with 233‐dimensional spaces and 122 signalized intersections, demonstrating that the developed methodology can deal with high‐dimensional traffic signal control effectively for real case applications.

U2 - 10.1111/mice.13293

DO - 10.1111/mice.13293

M3 - Journal article

VL - 40

SP - 741

EP - 763

JO - Computer-Aided Civil and Infrastructure Engineering

JF - Computer-Aided Civil and Infrastructure Engineering

SN - 1093-9687

IS - 6

ER -