4.8 Article

A Simplified Mode Based State-of-Charge Estimation Approach for Lithium-Ion Battery With Dynamic Linear Model

Journal

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
Volume 66, Issue 10, Pages 7717-7727

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2018.2880668

Keywords

Kalman filter; lithium-ion (Li-ion) battery; partial least squares (PLS) regression; state-of-charge (SOC) estimation

Funding

  1. Key Program for International S& T Cooperation and Exchange Projects of Shaanxi Province [2017KW-ZD-05]
  2. Fundamental Research Funds for Central Universities [3102017JC06004, 3102017OQD029]

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The performance of model-based state-ofcharge (SOC) estimation method relies on an accurate battery model. Nonlinear models are thus proposed to accurately describe the external characteristics of the lithium-ion battery. The nonlinear estimation algorithms and online parameter identification methods are needed to guarantee the accuracy of the model-based SOC estimation with nonlinear battery models. A new approach forming a dynamic linear battery model is proposed in this paper, which enables the application of the linear Kalman filter for SOC estimation and also avoids the usage of online parameter identification methods. With a moving window technology, partial least squares regression is able to establish a series of piecewise linear battery models automatically. One element state-space equation is then obtained to estimate the SOC from the linear Kalman filter. The experiments on a LiFePO4 battery prove the effectiveness of the proposed method compared with the extended Kalman filter with two resistance and capacitance equivalent circuit model and the adaptive unscented Kalman filter with least squares support vector machines.

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