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NTIS 바로가기Korean chemical engineering research = 화학공학, v.60 no.3, 2022년, pp.363 - 370
문예진 (광운대학교 화학공학과) , 김남훈 (광운대학교 화학공학과) , 유지훈 (광운대학교 화학공학과) , 이경민 (광운대학교 화학공학과) , 이종혁 (광운대학교 화학공학과) , 조원희 (광운대학교 화학공학과) , 김연수 (광운대학교 화학공학과)
In this paper, an estimation algorithm for state of charge (SOC) was applied using an equivalent circuit model (ECM) and an Extended Kalman Filter (EKF) to improve the estimation accuracy of the battery system states. In particular, an observer was designed to estimate SOC along with the aged capaci...
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