Research Progress on Data-Driven Methods for Battery States Estimation of Electric Buses

Author:

Zhao Dengfeng12,Li Haiyang2,Zhou Fang2ORCID,Zhong Yudong2ORCID,Zhang Guosheng1,Liu Zhaohui3,Hou Junjian2

Affiliation:

1. Key Laboratory of Operation Safety Technology on Transport Vehicles, PRC, Research Institute of Highway, Ministry of Transport, Beijing 100088, China

2. College of Mechanical and Electrical Engineering, Zhengzhou University of Light Industry, Zhengzhou 450002, China

3. Yutong Bus Co., Ltd., Zhengzhou 450004, China

Abstract

Battery states are very important for the safe and reliable use of new energy vehicles. The estimation of power battery states has become a research hotspot in the development of electric buses and transportation safety management. This paper summarizes the basic workflow of battery states estimation tasks, compares, and analyzes the advantages and disadvantages of three types of data sources for battery states estimation, summarizes the characteristics and research progress of the three main models used for estimating power battery states such as machine learning models, deep learning models, and hybrid models, and prospects the development trend of estimation methods. It can be concluded that there are many data sources used for battery states estimation, and the onboard sensor data under natural driving conditions has the characteristics of objectivity and authenticity, making it the main data source for accurate power battery states estimation; Artificial neural network promotes the rapid development of deep learning methods, and deep learning models are increasingly applied in power battery states estimation, demonstrating advantages in accuracy and robustness; Hybrid models estimate the states of power batteries more accurately and reliably by comprehensively utilizing the characteristics of different types of models, which is an important development trend of battery states estimation methods. Higher accuracy, real-time performance, and robustness are the development goals of power battery states estimation methods.

Funder

Opening Project of Key Laboratory of operation safety technology on transport vehicles, Ministry of Transport, PRC

National Natural Science Foundation of China

Zhengzhou University of Light Industry

Key Research and Development Projects of Henan Province

Major Science and Technology Projects of Henan Province

Key Scientific and Technological Project of Henan Province

Publisher

MDPI AG

Subject

Automotive Engineering

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