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Detection of Internal Short Circuit in Lithium Ion Battery Using Model-Based Switching Model Method SCIE SCOPUS

Title
Detection of Internal Short Circuit in Lithium Ion Battery Using Model-Based Switching Model Method
Authors
KIM, SANG WOOMINHWAN, SEOGOH, TAEDONGPARK, MIN JUNKOO, GYOGWON
Date Issued
2017-01
Publisher
MDPI AG
Abstract
Early detection of an internal short circuit (ISCr) in a Li-ion battery can prevent it from undergoing thermal runaway, and thereby ensure battery safety. In this paper, a model-based switching model method (SMM) is proposed to detect the ISCr in the Li-ion battery. The SMM updates the model of the Li-ion battery with ISCr to improve the accuracy of ISCr resistance R-ISCf estimates. The open circuit voltage (OCV) and the state of charge (SOC) are estimated by applying the equivalent circuit model, and by using the recursive least squares algorithm and the relation between OCV and SOC. As a fault index, the R-ISCf is estimated from the estimated OCVs and SOCs to detect the ISCr, and used to update the model; this process yields accurate estimates of OCV and R-ISCf. Then the next R-ISCf is estimated and used to update the model iteratively. Simulation data from a MATLAB/Simulink model and experimental data verify that this algorithm shows high accuracy of R-ISCf estimates to detect the ISCr, thereby helping the battery management system to fulfill early detection of the ISCr.
URI
https://oasis.postech.ac.kr/handle/2014.oak/41114
DOI
10.3390/en10010076
ISSN
1996-1073
Article Type
Article
Citation
Energies, vol. 10, no. 1, page. 76, 2017-01
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김상우KIM, SANG WOO
Dept of Electrical Enginrg
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