Technical Papers
Jul 30, 2024

Adaptive Frequency Green Light Optimal Speed Advisory Based on Deep Reinforcement Learning

Publication: Journal of Transportation Engineering, Part A: Systems
Volume 150, Issue 10

Abstract

The Green Light Optimal Speed Advisory (GLOSA) system suggests speeds to vehicles to assist them pass intersections during green intervals. In application, drivers can ultimately decide whether to change speed based on their driving experience. However, with the gradual popularization of autonomous driving, drivers are gradually leaving the driving area. Therefore, the central algorithms in on-board systems need to be trained more intelligently for autonomous decision-making. Specifically, we found that the frequency of decision making can significantly affect the performance of the GLOSA system, but this issue has not been discussed in previous research. In this paper, we propose an adaptive frequency GLOSA (AF-GLOSA) model based on deep reinforcement learning (DRL) algorithm. Different from traditional models, this model can extract effective features from raw data and learn decision-making experience through constant interaction with simulated environments. By using parameterized action spaces, we divided the GLOSA task into two parts: frequency control and speed consultation. The frequency control module helps filter out unnecessary operations, and the speed consultation module provides acceleration suggestions based on the results of the upper model. In addition, we have designed a novel reward function to balance fuel consumption and travel efficiency. Finally, the AF-GLOSA model was evaluated in both single intersection and multi-intersection scenarios in SUMO. The results indicate that the model can effectively reduce fuel consumption and carbon dioxide emissions in both cases. In term of the number of stops, the single-intersection outperforms the state-of-the-art method and the multi-intersection approaches the state-of-the-art method. The final results also demonstrate the necessity of considering decision-making frequency.

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Data Availability Statement

Some or all data, models, or code generated or used during the study are available in a repository (https://github.com/dongyu768/AF-GLOSA) online in accordance with funder data retention policies.

References

Asadi, B., and A. Vahidi. 2011. “Predictive cruise control: Utilizing upcoming traffic signal information for improving fuel economy and reducing trip time.” IEEE Trans. Control Syst. Technol. 19 (3): 707–714. https://doi.org/10.1109/TCST.2010.2047860.
Bai, Z., P. Hao, W. Shangguan, B. Cai, and M. J. Barth. 2022. “Hybrid reinforcement learning-based eco-driving strategy for connected and automated vehicles at signalized intersections.” IEEE Trans. Intell. Transp. Syst. 23 (9): 15850–15863. https://doi.org/10.1109/TITS.2022.3145798.
Erdmann, J. 2013. “Combining adaptive junction control with simultaneous green-light-optimal-speed-advisory.” In Proc., 2013 IEEE 5th Int. Symp. on Wireless Vehicular Communications (WiVeC), 1–5. New York: IEEE.
Fan, Z., R. Su, W. Zhang, and Y. Yu. 2019. “Hybrid actor-critic reinforcement learning in parameterized action space.” Preprint, submitted March 4, 2019. https://arxiv.org/abs/1903.01344.
Huang, Y., E. C. Y. Ng, J. L. Zhou, N. C. Surawski, E. F. C. Chan, and G. Hong. 2018. “Eco-driving technology for sustainable road transport: A review.” Renewable Sustainable Energy Rev. 93 (Oct): 596–609. https://doi.org/10.1016/j.rser.2018.05.030.
Karoui, M., G. Chalhoub, and A. Freitas. 2021. “An efficient path planning GLOSA–Based approach over large scale and realistic traffic scenario.” Internet Technol. Lett. 4 (4): e194. https://doi.org/10.1002/itl2.194.
Katsaros, K., R. Kernchen, M. Dianati, and D. Rieck. 2011. “Performance study of a green light optimized speed advisory (GLOSA) application using an integrated cooperative ITS simulation platform.” In Proc., 2011 7th Int. Wireless Communications and Mobile Computing Conf., 918–923. New York: IEEE.
Katwijk, R. T., and S. Gabriel. 2015. “Optimising a vehicle’s approach towards an adaptively controlled intersection.” IET Intel. Transport Syst. 9 (5): 479–487. https://doi.org/10.1049/iet-its.2014.0155.
Lopez, P. A., M. Behrisch, L. Bieker-Walz, J. Erdmann, Y. P. Flötteröd, R. Hilbrich, L. Lücken, J. Rummel, and P. Wagner. 2018. “Microscopic traffic simulation using SUMO.” In Proc., 2018 21st Int. Conf. on Intelligent Transportation Systems (ITSC), 2575–2582. New York: IEEE.
Luo, Y., S. Li, S. Zhang, Z. Qin, and K. Li. 2017. “Green light optimal speed advisory for hybrid electric vehicles.” Mech. Syst. Signal Process. 87 (Mar): 30–44. https://doi.org/10.1016/j.ymssp.2016.04.016.
Matsumoto, Y., T. Oshima, and R. Iwamoto. 2014. “Effect of information provision around signalized intersection on reduction of CO2 emission from vehicles.” Behav. Sci. 111 (Feb): 1015–1024. https://doi.org/10.1016/j.sbspro.2014.01.136.
Matsumoto, Y., and D. Tsurudome. 2014. “Evaluation of providing recommended speed for reducing CO2 emissions from vehicles by driving simulator.” Transp. Res. Procedia 3 (Dec): 31–40. https://doi.org/10.1016/j.trpro.2014.10.088.
Mintsis, E., E. I. Vlahogianni, and E. Mitsakis. 2020. “Dynamic eco-driving near signalized intersections: Systematic review and future research directions.” J. Transp. Eng. Part A. Syst. 146 (4): 04020018. https://doi.org/10.1061/JTEPBS.0000318.
Peng, J., S. Zhang, Y. Zhou, and Z. Li. 2022. “An integrated model for autonomous speed and lane change decision-making based on deep reinforcement learning.” IEEE Trans. Intell. Transp. Syst. 23 (11): 21848–21860. https://doi.org/10.1109/TITS.2022.3185255.
Peng, Z., J. Wang, Z. Gao, and H. Huang. 2023. “Modelling and simulation of speed guidance of multi-intersection in a connected vehicle environment.” In Green transportation and low carbon mobility safety, edited by W. Wang, J. Wu, X. Jiang, R. Li, and H. Zhang, 161–176. Singapore: Springer Nature.
Schulman, J., F. Wolski, P. Dhariwal, A. Radford, and O. Klimov. 2017. “Proximal policy optimization algorithms.” Preprint, submitted July 20, 2017. https://arxiv.org/abs/1707.06347.
Seredynski, M., B. Dorronsoro, and D. Khadraoui. 2013. “Comparison of green light optimal speed advisory approaches.” In Proc., 16th Int. IEEE Conf. on Intelligent Transportation Systems (ITSC 2013), 2187–2192. New York: IEEE.
Sharara, M., M. Ibrahim, and G. Chalhoub. 2019. “Impact of network performance on GLOSA.” In Proc., 2019 16th IEEE Annual Consumer Communications and Networking Conference (CCNC), 1–6. New York: IEEE.
Stebbins, S., M. Hickman, J. Kim, and H. L. Vu. 2017. “Characterising green light optimal speed advisory trajectories for platoon-based optimisation.” Transp. Res. Part C Emerging Technol. 82 (Sept): 43–62. https://doi.org/10.1016/j.trc.2017.06.014.
Stevanovic, A., J. Stevanovic, and C. Kergaye. 2013. “Green light optimized speed advisory systems: Impact of signal phasing information accuracy.” Transp. Res. Rec. 2390 (1): 53–59. https://doi.org/10.3141/2390-06.
Suzuki, H., and Y. Marumo. 2019. “A new approach to green light optimal speed advisory (GLOSA) systems and its limitations in traffic flows.” In Human systems engineering and design, edited by T. Ahram, W. Karwowski, and R. Taiar, 776–782. Cham, Switzerland: Springer.
Tang, T-Q., J. Zhang, and K. Liu. 2017. “A speed guidance model accounting for the driver’s bounded rationality at a signalized intersection.” Physica A 473 (May): 45–52. https://doi.org/10.1016/j.physa.2017.01.025.
Tielert, T., M. Killat, H. Hartenstein, R. Luz, S. Hausberger, and T. Benz. 2010. “The impact of traffic-light-to-vehicle communication on fuel consumption and emissions.” In Proc., 2010 Internet of Things (IOT), 1–8. New York: IEEE.
Treiber, M., A. Hennecke, and D. Helbing. 2000. “Congested traffic states in empirical observations and microscopic simulations.” Phys. Rev. E 62 (2): 1805–1824. https://doi.org/10.1103/PhysRevE.62.1805.
Wu, W., P. K. Li, and Y. Zhang. 2015. “Modelling and simulation of vehicle speed guidance in connected vehicle environment.” Int. J. Simul. Modell. 14 (1): 145–157. https://doi.org/10.2507/IJSIMM14(1)CO3.
Yuan, S., S. Xu, and S. Zheng. 2022. “Deep reinforcement learning based green wave speed guidance for human-driven connected vehicles at signalized intersections.” In Proc., 2022 14th Int. Conf. on Measuring Technology and Mechatronics Automation (ICMTMA), 331–339. New York: IEEE.

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Go to Journal of Transportation Engineering, Part A: Systems
Journal of Transportation Engineering, Part A: Systems
Volume 150Issue 10October 2024

History

Received: Nov 7, 2023
Accepted: Apr 9, 2024
Published online: Jul 30, 2024
Published in print: Oct 1, 2024
Discussion open until: Dec 30, 2024

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Professor, Dept. of Software College, Liaoning Technical Univ., Huludao 125105, China. ORCID: https://orcid.org/0000-0002-8849-9656. Email: [email protected]
Researcher, Dept. of Software College, Liaoning Technical Univ., Huludao 125105, China (corresponding author). ORCID: https://orcid.org/0009-0008-0124-1080. Email: [email protected]
Researcher, Dept. of Software College, Liaoning Technical Univ., Huludao 125105, China. Email: [email protected]

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