Research progress and prospect of energy-saving optimal control for intelligent and connected electric vehicles
DOI: 10.23977/autml.2023.040208 | Downloads: 27 | Views: 521
Author(s)
Wang Shuang 1
Affiliation(s)
1 China Academy of Transportation Science, Beijing, 100013, China
Corresponding Author
Wang ShuangABSTRACT
Modern communication and network technology are integrated to realize the exchange and sharing of intelligent information between vehicles, roads, people and clouds. It has the functions of complex environment perception, intelligent decision-making, collaborative control, etc., and can realize safe, efficient, comfortable and energy-saving driving, and finally realize a new generation of ICEV (Intelligent and Connected Electric Vehicles)operated instead of people. For ICEV, it is important to optimize the speed trajectory by using the information of the road ahead to realize the predictive energy-saving control, which will improve the economy of the vehicle. In order to fully understand the research progress of the optimal control of ICEV, the key issues of the optimal control of vehicle energy consumption and emissions based on the information of intelligent network are summarized. Finally, the future challenges in intelligent vehicle optimization are prospected, which provides a reference for further extensive research.
KEYWORDS
Intelligent and connected; Electric vehicles; Energy-savingCITE THIS PAPER
Wang Shuang, Research progress and prospect of energy-saving optimal control for intelligent and connected electric vehicles. Automation and Machine Learning (2023) Vol. 4: 55-60. DOI: http://dx.doi.org/10.23977/autml.2023.040208.
REFERENCES
[1] Dongxin, L., Qiqige, W., Wenbo, C., Huilong, Y., & Xiaoping, D. (2021). A priority tree based coordination method for intelligent and connected vehicles at unsignalized intersections. IET intelligent transport systems, 2021(8), 15.
[2] Zhang, X., Cheng, Z., Ma, J., Huang, S., Lewis, F. L., & Lee, T. H. (2022). Semi-definite relaxation-based admm for cooperative planning and control of connected autonomous vehicles. IEEE transactions on intelligent transportation systems,2022(7), 23.
[3] Mahmoud, A., Noureldin, A., & Hassanein, H. S. (2019). Integrated positioning for connected vehicles. IEEE Transactions on Intelligent Transportation Systems, 2019(99), 1-13.
[4] Jing, S., Hui, F., Zhao, X., Rios-Torres, J., & Khattak, A. J. (2019). Cooperative game approach to optimal merging sequence and on-ramp merging control of connected and automated vehicles. IEEE Transactions on Intelligent Transportation Systems, 2019(99), 1-11.
[5] Li, S., Shu, K., Chen, C., & Cao, D. (2021). Planning and decision-making for connected autonomous vehicles at road intersections: a review. Chinese Journal of Mechanical Engineering, 34(1), 1-18.
[6] Lijun, Q., Lihong, Q., Peng, C., Zoleikha, A., & Pierluigi, P. (2017). Fuel efficient model predictive control strategies for a group of connected vehicles incorporating vertical vibration. Science China Technological Sciences, 2017(11), 140-154.
[7] Abousleiman, R., & Rawashdeh, O. (2014). Energy efficient routing for electric vehicles using particle swarm optimization. Sae Technical Papers, 1(1), 148-155.
[8] Wang, Y., Jiang, J., & Mu, T. (2013). Context-aware and energy-driven route optimization for fully electric vehicles via crowdsourcing. IEEE Transactions on Intelligent Transportation Systems, 14(3), 1331-1345.
[9] Nandi, A. K., Chakraborty, D., & Vaz, W. (2015). Design of a comfortable optimal driving strategy for electric vehicles using multi-objective optimization. Journal of Power Sources, 283(1), 1-18.
[10] Dong, H., Zhuang, W., Chen, B., Wang, Y., Lu, Y., & Liu, Y l. (2022). A comparative study of energy-efficient driving strategy for connected internal combustion engine and electric vehicles at signalized intersections. Applied Energy, 310, (10), 24.
[11] Komiyama, R., & Fujii, Y. (2013). Analysis of energy saving and environmental characteristics of electric vehicle in regionally-disaggregated world energy model. Electrical Engineering in Japan, 186(4), 20-36.
[12] Guo, H., He, H., & Sun, F. (2013). A combined cooperative braking model with a predictive control strategy in an electric vehicle. Energies, 6(12), 6455-6475.
[13] Hongwei, Zhang, W., Chen, Z., Shang, Z., Xu, Z., & Gao, Y l. (2020). Optimum driving system design for dual-motor pure electric vehicles. Journal of Beijing Institute of Technology, 29,106(04), 161-171.
[14] Xie, L., Luo, Y., Li, S., & Li, K. (2018). Coordinated control for adaptive cruise control system of distributed drive electric vehicles. Qiche Gongcheng/Automotive Engineering, 40(6), 652-658.
[15] Chasse, A., & Sciarretta, A. (2011). Supervisory control of hybrid powertrains: an experimental benchmark of offline optimization and online energy management. Control Engineering Practice, 19(11), 1253-1265.
[16] Salehi, J., Namvar, A., & Gazijahani, F. S. (2019). Scenario-based co-optimization of neighboring multi carrier smart buildings under demand response exchange. Journal of Cleaner Production, 235(20), 1483-1498.
[17] Zeng, X., Qian, Q., Chen, H., Song, D., & Li, G. (2021). A unified quantitative analysis of fuel economy for hybrid electric vehicles based on energy flow. Journal of Cleaner Production, 292(7411), 126040.
[18] Ubukata, N., Fukasawa, S., Yamashita, Y., & Kaneko, K. (2012). Approach to the optimal energy-saving system for railway vehicles. Japanese Railway Engineering, 52(3), 51.
[19] Chen, Z., Liu, W., Yang, Y., & Chen, W. (2015). Online energy management of plug-in hybrid electric vehicles for prolongation of all-electric range based on dynamic programming. Mathematical Problems in Engineering, 2015, (17)1-11.
[20] Wang, H., Jiang, Z., Wang, Y., Zhang, H., & Wang, Y. (2018). A two-stage optimization method for energy-saving flexible job-shop scheduling based on energy dynamic characterization. Journal of Cleaner Production, 188(1), 575-588.
Downloads: | 1745 |
---|---|
Visits: | 71306 |
Sponsors, Associates, and Links
-
Power Systems Computation
-
Internet of Things (IoT) and Engineering Applications
-
Computing, Performance and Communication Systems
-
Journal of Artificial Intelligence Practice
-
Advances in Computer, Signals and Systems
-
Journal of Network Computing and Applications
-
Journal of Web Systems and Applications
-
Journal of Electrotechnology, Electrical Engineering and Management
-
Journal of Wireless Sensors and Sensor Networks
-
Journal of Image Processing Theory and Applications
-
Mobile Computing and Networking
-
Vehicle Power and Propulsion
-
Frontiers in Computer Vision and Pattern Recognition
-
Knowledge Discovery and Data Mining Letters
-
Big Data Analysis and Cloud Computing
-
Electrical Insulation and Dielectrics
-
Crypto and Information Security
-
Journal of Neural Information Processing
-
Collaborative and Social Computing
-
International Journal of Network and Communication Technology
-
File and Storage Technologies
-
Frontiers in Genetic and Evolutionary Computation
-
Optical Network Design and Modeling
-
Journal of Virtual Reality and Artificial Intelligence
-
Natural Language Processing and Speech Recognition
-
Journal of High-Voltage
-
Programming Languages and Operating Systems
-
Visual Communications and Image Processing
-
Journal of Systems Analysis and Integration
-
Knowledge Representation and Automated Reasoning
-
Review of Information Display Techniques
-
Data and Knowledge Engineering
-
Journal of Database Systems
-
Journal of Cluster and Grid Computing
-
Cloud and Service-Oriented Computing
-
Journal of Networking, Architecture and Storage
-
Journal of Software Engineering and Metrics
-
Visualization Techniques
-
Journal of Parallel and Distributed Processing
-
Journal of Modeling, Analysis and Simulation
-
Journal of Privacy, Trust and Security
-
Journal of Cognitive Informatics and Cognitive Computing
-
Lecture Notes on Wireless Networks and Communications
-
International Journal of Computer and Communications Security
-
Journal of Multimedia Techniques
-
Computational Linguistics Letters
-
Journal of Computer Architecture and Design
-
Journal of Ubiquitous and Future Networks