Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
research-article

Adaptive signal light timing for regional traffic optimization based on graph convolutional network empowered traffic forecasting

Published: 04 March 2024 Publication History

Abstract

With the acceleration of urbanization, urban traffic congestion is becoming more and more serious, in which the timing of signal lights for regional traffic optimization is particularly important. Since existing signal lights-based traffic optimization technologies, especially green wave, do not take the regional traffic follow into consideration, therefore not being efficient. Therefore, we propose Adaptive Signal Light Timing for Regional Traffic Optimization based on Graph Convolutional Network Empowered Traffic Forecasting. First, we propose a multi-intersection traffic flow prediction model, namely, A-GCN+ with an improved prediction accuracy of 6.3%, which utilizes the attention-aggregated graph convolutional neural networks (A-GCN) and temporal convolutional networks (TCN) to extract spatial and temporal features of the traffic flow. Second, we propose a dynamic regional traffic signal coordination optimization control method, which utilizes the predicted intersection approach traffic flow from A-GCN+ and combines it with the improved whale optimization algorithm (IWOA) to obtain the optimal solution for the regional average vehicle delay model. Finally, we propose a bidirectional green wave automatic control method for the main line, which utilizes the optimized results of dynamic regional traffic signal timing and employs a multi-strategy fusion graphical method to obtain the dynamic main line bidirectional green wave. Experimental results show that compared to the traditional graphical method, the multi-strategy fusion graphical method increases the green wave bandwidth by 20%. The mainline bidirectional green wave adaptive coordinated control method improves main line traffic efficiency by 32.3% and regional network traffic efficiency by 8.7%.

Highlights

A cross-intersection traffic flow prediction model A-GCN+ utilizing Attention-aggregated GCN and TCN for TS features.
A dynamic regional traffic signal coordination method with improved whale optimization algorithm and results of A-GCN+.
A bidirectional green wave automatic control method with a multi-strategy fusion graphical method for the main line.
The multi-strategy fusion graphical method increases the green wave bandwidth by up to 20%.
The proposed method improves main line traffic efficiency by 32.3% and regional network traffic efficiency by 8.7%.

References

[1]
Yu P., Luo J., Minimize pressure difference traffic signal control based on deep reinforcement learning, in: 2022 41st Chinese Control Conference, CCC, IEEE, China, 2022, pp. 5493–5498.
[2]
Aung N., Zhang W., Sultan K., Dhelim S., Ai Y., Dynamic traffic congestion pricing and electric vehicle charging management system for the Internet of Vehicles in smart cities, Digit. Commun. Netw. 7 (4) (2021) 492–504,.
[3]
Wu N., Li D., Xi Y., Distributed weighted balanced control of traffic signals for urban traffic congestion, IEEE Trans. Intell. Transp. Syst. 20 (10) (2019) 3710–3720.
[4]
Zhao L., Bi Z., Hawbani A., Yu K., Zhang Y., Guizani M., ELITE: An intelligent digital twin-based hierarchical routing scheme for softwarized vehicular networks, IEEE Trans. Mob. Comput. (2022) 1,.
[5]
Fang S., Prinet V., Chang J., Werman M., Zhang C., Xiang S., Pan C., MS-Net: Multi-source spatio-temporal network for traffic flow prediction, IEEE Trans. Intell. Transp. Syst. 23 (7) (2022) 7142–7155.
[6]
Zheng G., Chai W.K., Duanmu J.-L., Katos V., Hybrid deep learning models for traffic prediction in large-scale road networks, Inf. Fusion 92 (2023) 93–114,.
[7]
Ait Ouallane A., Bakali A., Bahnasse A., Broumi S., Talea M., Fusion of engineering insights and emerging trends: Intelligent urban traffic management system, Inf. Fusion 88 (2022) 218–248.
[8]
Liang Z., Cui Y., Xiao Y., Chen H., Hao N., Qi J., Research on signal optimized control algorithm of two-way green wave for arterial road considering the overlapping phase, in: 2020 IEEE 5th International Conference on Signal and Image Processing, ICSIP, IEEE, China, 2020, pp. 633–638.
[9]
Zhao L., Yin Z., Yu K., Tang X., Xu L., Guo Z., Nehra P., A fuzzy logic-based intelligent multiattribute routing scheme for two-layered SDVNs, IEEE Trans. Netw. Serv. Manag. 19 (4) (2022) 4189–4200,.
[10]
Zhao L., Li H., Lin N., Lin M., Fan C., Shi J., Intelligent content caching strategy in autonomous driving toward 6G, IEEE Trans. Intell. Transp. Syst. 23 (7) (2022) 9786–9796,.
[11]
Wang L., Deng X., Gui J., Chen X., Wan S., Microservice-oriented service placement for mobile edge computing in sustainable Internet of Vehicles, IEEE Trans. Intell. Transp. Syst. 24 (9) (2023) 10012–10026,.
[12]
Khosravi M.R., Rezaee K., Moghimi M.K., Wan S., Menon V.G., Crowd emotion prediction for human-vehicle interaction through modified transfer learning and fuzzy logic ranking, IEEE Trans. Intell. Transp. Syst. (2023) 1–10,.
[13]
Du S., Li T., Yang Y., A traffic flow prediction model based on sequence-to-sequence spatio-temporal attention learning, J. Comput. Res. Dev. 57 (8) (2020) 1715–1728.
[14]
Zhu Y., Wang S., Traffic prediction enabled dynamic access points switching for energy saving in dense networks, Digit. Commun. Netw. (2022),.
[15]
Kim D., Jeong O., Cooperative traffic signal control with traffic flow prediction in multi-intersection, Sensors 20 (1) (2019) 137.
[16]
Li W., Ban X.J., Zheng J., Liu H.X., Gong C., Li Y., Real-time movement-based traffic volume prediction at signalized intersections, J. Transp. Eng. A: Systems 146 (8) (2020).
[17]
Yu B., Yin H., Zhu Z., Spatio-temporal graph convolutional networks: A deep learning framework for traffic forecasting, in: 2018 27th International Joint Conference on Artificial Intelligence, IJCAI, Morgan Kaufmann, Sweden, 2018, pp. 3634–3640.
[18]
Ye J., Xue S., Jiang A., Attention-based spatio-temporal graph convolutional network considering external factors for multi-step traffic flow prediction, Digit. Commun. Netw. 8 (3) (2022) 343–350,.
[19]
Huang M., Zhu M., Xiao Y., Liu Y., Bayonet-corpus: A trajectory prediction method based on bayonet context and bidirectional GRU, Digit. Commun. Netw. 7 (1) (2021) 72–81,.
[20]
Zhang J., Mao S., Yang L., Ma W., Li S., Gao Z., Physics-informed deep learning for traffic state estimation based on the traffic flow model and computational graph method, Inf. Fusion 101 (2024).
[21]
Yang S., Yang B., An inductive heterogeneous graph attention-based multi-agent deep graph infomax algorithm for adaptive traffic signal control, Inf. Fusion 88 (2022) 249–262.
[22]
Yang S., Yang B., Zeng Z., Kang Z., Causal inference multi-agent reinforcement learning for traffic signal control, Inf. Fusion 94 (2023) 243–256.
[23]
Kennedy J., Eberhart R., Particle swarm optimization, in: Proceedings of ICNN’95 - International Conference on Neural Networks, Vol.4, IEEE, Australia, 1995, pp. 1942–1948.
[24]
Holland J.H., Genetic algorithms, Sci. Am. 267 (1) (1992) 66–73.
[25]
Zhang Y., Zhu H.-b., Liu X.-q., Chen X.-b., Optimal control for region of the city traffic signal base on selective particle swarm optimization algorithm, in: 2017 36th Chinese Control Conference, CCC, IEEE, China, 2017, pp. 2723–2728.
[26]
Yong Z., Hai-bo Z., Optimal control for region of the city traffic signal based on APSOWM, in: 2017 29th Chinese Control and Decision Conference, CCDC, IEEE, China, 2017, pp. 2412–2417.
[27]
Yang X.-S., Firefly algorithms for multimodal optimization, in: Stochastic Algorithms: Foundations and Applications: 5th International Symposium, SAGA 2009, Sapporo, Japan, October 26-28, 2009. Proceedings 5, Springer Berlin Heidelberg, Germany, 2009, pp. 169–178.
[28]
Chang-yuan L., Yu-yan R., Xiao-jun B., Timing optimization of regional traffic signals based on improved firefly algorithm, Control Decis. 35 (12) (2020) 2829–2834.
[29]
Ma D., Xiao J., Song X., Ma X., Jin S., A back-pressure-based model with fixed phase sequences for traffic signal optimization under oversaturated networks, IEEE Trans. Intell. Transp. Syst. 22 (9) (2021) 5577–5588.
[30]
Qiao F., Tan X., Tobi F.A., Optimization of bidirectional green wave of traffic systems on urban arterial road, in: 2017 9th International Conference on Modelling, Identification and Control, ICMIC, IEEE, China, 2017, pp. 851–856.
[31]
Yan J., Shao P., Chen Q., Zhang M., Li Z., Wang L., A study of bidirectional green wave control based on random optimal graphical method, in: 2018 IEEE 7th Data Driven Control and Learning Systems Conference, DDCLS, IEEE, China, 2018, pp. 1180–1184.
[32]
TianHao Z., Coordinated Control and System Design of Green Wave Signals for Dynamic Arterial Roads Based on Traffic Flow Prediction, (Master’s thesis) Nantong University, 2020.
[33]
S. Bai, J.Z. Kolter, V. Koltun, An Empirical Evaluation of Generic Convolutional and Recurrent Networks for Sequence Modeling, in: 2018 6th International Conference on Learning Representations, ICLR, Canada, 2018.
[34]
Mirjalili S., Lewis A., The whale optimization algorithm, Adv. Eng. Softw. 95 (2016) 51–67.
[35]
GU W., An improved whale optimization algorithm with cultural mechanism for high-dimensional global optimization problems, in: 2020 IEEE International Conference on Information Technology, Big Data and Artificial Intelligence, ICIBA, IEEE, China, 2020, pp. 1282–1286.
[36]
Yonggui W., Xin L., Lianzheng G., Improved whale optimization algorithm for solving high-dimensional optimization problems, J. Front. Comput. Sci. Technol. 16 (12) (2022) 2890–2902.
[37]
Cao H., Research on Regional Traffic Coordination Optimal Control Based on Vehicle Average Vehicle Delay Model, (Master’s thesis) Nanjing University of Posts and Telecommunications, 2020.
[38]
Xiang-chen L., Jin-long L., Meng-chen H., A phase-optimization-based two-way green wave control strategy for urban arterials, J. Transp. Eng. Inf. 16 (1) (2018) 115–121.
[39]
Yi-yuan Z., Jin-long L., Xiang-chen L., Yi-bing Z., Study on green wave coordination control method based on ripple changes, J. Transp. Eng. Inf. 17 (3) (2019) 52–61.
[40]
Abdul Hanan A.H., Yazid Idris M., Kaiwartya O., Prasad M., Ratn Shah R., Real traffic-data based evaluation of vehicular traffic environment and state-of-the-art with future issues in location-centric data dissemination for VANETs, Digit. Commun. Netw. 3 (3) (2017) 195–210,.

Cited By

View all
  • (2024)Spatiotemporal gated traffic trajectory simulation with semantic-aware graph learningInformation Fusion10.1016/j.inffus.2024.102404108:COnline publication date: 1-Aug-2024

Index Terms

  1. Adaptive signal light timing for regional traffic optimization based on graph convolutional network empowered traffic forecasting
      Index terms have been assigned to the content through auto-classification.

      Recommendations

      Comments

      Information & Contributors

      Information

      Published In

      cover image Information Fusion
      Information Fusion  Volume 103, Issue C
      Mar 2024
      918 pages

      Publisher

      Elsevier Science Publishers B. V.

      Netherlands

      Publication History

      Published: 04 March 2024

      Author Tags

      1. Urban traffic
      2. Traffic flow prediction
      3. Regional traffic signal coordination optimization
      4. Bidirectional green wave

      Qualifiers

      • Research-article

      Contributors

      Other Metrics

      Bibliometrics & Citations

      Bibliometrics

      Article Metrics

      • Downloads (Last 12 months)0
      • Downloads (Last 6 weeks)0
      Reflects downloads up to 10 Nov 2024

      Other Metrics

      Citations

      Cited By

      View all
      • (2024)Spatiotemporal gated traffic trajectory simulation with semantic-aware graph learningInformation Fusion10.1016/j.inffus.2024.102404108:COnline publication date: 1-Aug-2024

      View Options

      View options

      Get Access

      Login options

      Media

      Figures

      Other

      Tables

      Share

      Share

      Share this Publication link

      Share on social media