State of health estimation for the lithium-ion batteries based on CNN-MLP network

Author:

Liao Yu12ORCID,Ma Xianchao1,Guo Li3,Feng Xu1,Hu Yuhang1,Li Runze4

Affiliation:

1. Hubei University for Nationalities, China

2. Sichuan University Ringgold Standard Institution Chengdu, China

3. School of Electrical Engineering, Anhui Polytechnic University, China

4. Nanjing University of Aeronautics and Astronautics, China

Abstract

With the rapid development of new energy vehicles, it is recognized that predicting the state of health (SoH) of lithium-ion battery is crucial for ensuring the safety of networked vehicles. However, the selection of health indicators greatly influences the accuracy of SoH prognostics. To obtain an accurate estimation of SoH, this paper proposes an SoH estimation model based on incremental capacity features. First, the incremental capacity curve is extracted from battery discharge data and filtered using a Gaussian filtering algorithm to remove noise. Second, statistical features extracted from the incremental capacity curve are considered health factors, and multiple optimal features are selected using Pearson’s correlation coefficient. Finally, the innovative integration of spatiotemporal feature extraction with advanced pattern recognition and nonlinear modeling led to the proposal of a hybrid Convolutional Neural Network–Multi-Layer Perceptron (CNN-MLP) model for estimating the SoH of lithium-ion batteries. To validate the high accuracy of the proposed method, experiments are conducted using the CALCE battery dataset and compared with other popular models. The experimental results indicate that the proposed method can predict the SoH of the battery with superior performance, such as higher speed and accuracy.

Funder

National Natural Science Foundation of China

Natural Science Research Project of Anhui Province Universities

Scientific Start-up Fund for Introducing Talents of Anhui Polytechnic University

Publisher

SAGE Publications

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