4.8 Article

A physics-based fractional order model and state of energy estimation for lithium ion batteries. Part II: Parameter identification and state of energy estimation for LiFePO4 battery

期刊

JOURNAL OF POWER SOURCES
卷 367, 期 -, 页码 202-213

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.jpowsour.2017.09.048

关键词

Physics-based; Fractional order model; Lexicographic optimization; Adaptive fractional order extended Kalman filter (AFEKF); State of energy (SOE) estimation

资金

  1. Research and Development of Application Technology Plan Project in Heilongjiang Province of China [GA13A202]

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State of energy (SOE) is an important index for the electrochemical energy storage system in electric vehicles. In this paper, a robust state of energy estimation method in combination with a physical model parameter identification method is proposed to achieve accurate battery state estimation at different operating conditions and different aging stages. A physics-based fractional order model with variable solid-state diffusivity (FOM-VSSD) is used to characterize the dynamic performance of a LiFePO4/graphite battery. In order to update the model parameter automatically at different aging stages, a multistep model parameter identification method based on the lexicographic optimization is especially designed for the electric vehicle operating conditions. As the battery available energy changes with different applied load current profiles, the relationship between the remaining energy loss and the state of charge, the average current as well as the average squared current is modeled. The SOE with different operating conditions and different aging stages are estimated based on an adaptive fractional order extended Kalman filter (AFEKF). Validation results show that the overall SOE estimation error is within +/- 5%. The proposed method is suitable for the electric vehicle online applications. (C) 2017 Elsevier B.V. All rights reserved.

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