Current position: JIWU >> Scientific Research >> Paper Publications
武骥

Personal Information

Associate professor  
Supervisor of Master's Candidates  

Paper Publications

State of Charge Estimation for Traction Battery Based on EKF-SVM Algorithm

Hits:

DOI number:10.19562/j.chinasae.qcgc.2020.11.010

Journal:Automotive Engineering

Abstract:In view of that the single SOC estimation algorithm cannot concurrently meet the requirements of multi-indicators, an algorithm combining the extended Kalman filtering (EKF) and support vector machine (SVM) is proposed. By dynamically tracking the model parameters and estimating the open-circuit voltage in real-time, the preliminary SOC estimation is obtained by using EKF algorithm. Furthermore, by training the DST condition data output from EKF algorithm, SVM model is obtained and its regression prediction ability is utilized to perform error compensation on preliminary estimation, further reducing the error of SOC estimation. The results of simulation show that compared with EKF and EKF-BP algorithms,the proposed EKF-SVM algorithm has better robustness and adaptability and can achieve accurate estimation of battery SOC,with the maximum absolute error of about 1%.

Indexed by:Journal paper

Volume:42

Issue:11

Page Number:1522-1528

Translation or Not:no

Date of Publication:2020-11-25

Links to published journals:http://www.qichegongcheng.com/CN/10.19562/j.chinasae.qcgc.2020.11.010

Pre One:Health Prognosis With Optimized Feature Selection for Lithium-Ion Battery in Electric Vehicle Applications