Dual EKF-Based State and Parameter Estimator for a LiFePO4 Battery Cell


Vol. 17, No. 2, pp. 398-410, Mar. 2017
10.6113/JPE.2019.17.2.398


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 Abstract

This work presents the design of a dual extended Kalman filter (EKF) as a state/parameter estimator suitable for adaptive state-of-charge (SoC) estimation of an automotive lithium?iron?phosphate (LiFePO4) cell. The design of both estimators is based on an experimentally identified, lumped-parameter equivalent battery electrical circuit model. In the proposed estimation scheme, the parameter estimator has been used to adapt the SoC EKF-based estimator, which may be sensitive to nonlinear map errors of battery parameters. A suitable weighting scheme has also been proposed to achieve a smooth transition between the parameter estimator-based adaptation and internal model within the SoC estimator. The effectiveness of the proposed SoC and parameter estimators, as well as the combined dual estimator, has been verified through computer simulations on the developed battery model subject to New European Driving Cycle (NEDC) related operating regimes.


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Cite this article

[IEEE Style]

D. Pavkovic, M. Krznar, A. Komljenovic, M. Hrgetic, D. Zorc, "Dual EKF-Based State and Parameter Estimator for a LiFePO4 Battery Cell," Journal of Power Electronics, vol. 17, no. 2, pp. 398-410, 2017. DOI: 10.6113/JPE.2019.17.2.398.

[ACM Style]

Danijel Pavkovic, Matija Krznar, Ante Komljenovic, Mario Hrgetic, and Davor Zorc. 2017. Dual EKF-Based State and Parameter Estimator for a LiFePO4 Battery Cell. Journal of Power Electronics, 17, 2, (2017), 398-410. DOI: 10.6113/JPE.2019.17.2.398.