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http://dx.doi.org/10.5370/KIEE.2011.60.1.142

Multiple Model Adaptive Estimation of the SOC of Li-ion battery for HEV/EV  

Jung, Hae-Bong (충북대학교 전자공학과)
Kim, Young-Chol (충북대학교 전자공학부)
Publication Information
The Transactions of The Korean Institute of Electrical Engineers / v.60, no.1, 2011 , pp. 142-149 More about this Journal
Abstract
This paper presents a new state of charge(SOC) estimation of large capacity of Li-ion battery (LIB) based on the multiple model adaptive estimation(MMAE) method. We first introduce an equivalent circuit model of LIB. The relationship between the terminal voltage and the open circuit voltage(OCV) is nonlinear and may vary depending on the changes of temperature and C-rate. In this paper, such behaviors are described as a set of multiple linear time invariant impedance models. Each model is identified at a temperature and a C-rate. These model set must be obtained a priori for a given LIB. It is shown that most of impedances can be modeled by first-order and second-order transfer functions. For the real time estimation, we transform the continuous time models into difference equations. Subsequently, we construct the model banks in the manner that each bank consists of four adjacent models. When an operating point of cell temperature and current is given, the corresponding model bank is directly determined so that it is included in the interval generated by four operating points of the model bank. The MMAE of SOC at an arbitrary operating point (T $^{\circ}C$, $I_{bat}$[A]) is performed by calculating a linear combination of voltage drops, which are obtained by four models of the selected model bank. The demonstration of the proposed method is shown through simulations using DUALFOIL.
Keywords
Li-ion battery; State of charge; SOC estimation; Battery model; Open circuit voltage(OCV); C-rate; multiple model adaptive estimation;
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