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Internal Short Circuit Detection in Lithium Ion Battery

Title
Internal Short Circuit Detection in Lithium Ion Battery
Authors
서민환
Date Issued
2017
Publisher
포항공과대학교
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 thesis, we propose an algorithm for estimating an internal short circuit (ISCr) resistance in a Li-ion battery. The open circuit voltage (OCV) and the state of charge (SOC) are estimated by applying the equivalent circuit model of the Li-ion battery with ISCr, and by using the recursive least squares algorithm and the relation between OCV and SOC. As a fault index, the ISCr resistance R_ISCf is estimated from the estimated OCVs and SOCs to detect the ISCr. To improve the accuracy of R_ISCf estimates, the switching model method (SMM) is also proposed. The R_ISCf is 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. To verify this algorithm, the simulation data from MATLAB/Simulink model and experimental data are used. The result shows that the proposed algorithm contributes to detect the ISCr fault in Li-ion battery, thereby helping the battery management system to fulfill early detection of the ISCr.
URI
http://postech.dcollection.net/jsp/common/DcLoOrgPer.jsp?sItemId=000002327943
https://oasis.postech.ac.kr/handle/2014.oak/93324
Article Type
Thesis
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