4.3 Article

Condition Monitoring of Lithium Polymer Batteries Based on a Sigma-Point Kalman Filter

Journal

JOURNAL OF POWER ELECTRONICS
Volume 12, Issue 5, Pages 778-786

Publisher

KOREAN INST POWER ELECTRONICS
DOI: 10.6113/JPE.2012.12.5.778

Keywords

Capacity; Lithium polymer battery; Monitoring; Sigma-point Kalman filter; State-of-charge

Funding

  1. KESRI (Korea Electrical Engineering and Science Research Institute) [2009T100100651]
  2. MKE (Ministry of Knowledge Economy)

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In this paper, a novel scheme for the condition monitoring of lithium polymer batteries is proposed, based on the sigma-point Kalman filter (SPKF) theory. For this, a runtime-based battery model is derived, from which the state-of-charge (SOC) and the capacity of the battery are accurately predicted. By considering the variation of the serial ohmic resistance (R-o) in this model, the estimation performance is improved. Furthermore, with the SPKF, the effects of the sensing noise and disturbance can be compensated and the estimation error due to linearization of the nonlinear battery model is decreased. The effectiveness of the proposed method is verified by Matlab/Simulink simulation and experimental results. The results have shown that in the range of a SOC that is higher than 40%, the estimation error is about 1.2% in the simulation and 1.5% in the experiment. In addition, the convergence time in the SPKF algorithm can be as fast as 300 s.

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