3.8 Proceedings Paper

A Novel Method of Open Circuit Voltage Reconstruction for LiFePO4 Battery based on Incremental Capacity Analysis

出版社

IEEE
DOI: 10.1109/ICIEA51954.2021.9516224

关键词

LiFePO4 battery; OCV; curve reconstruction

资金

  1. National Natural Science Foundation of China [52007085]
  2. Postgraduate Research and Practice Innovation Program of Jiangsu Province [SJCX20_0129, SJCX20_0127]

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Inconsistencies in capacity and SOC of series-connected cells can prevent complete charging or discharging, limiting pack performance. Reconstructing OCV curves without disassembling packs is crucial for BMS to accurately estimate cell state information and enhance system stability. A new method based on ICA shows promising results in accurately reconstructing OCV curves with minimal error.
The inconsistencies of capacity and SOC make series-connected cells unable to be completely charged or discharged, which severely restrict the performance of the pack. In this case, the complete open circuit voltage (OCV) curve of cells will not be available, which will affect the accurate estimation of capacity and SOC. Therefore, how to reconstruct the OCV curve of cells without disassembling the pack is of great significance for the BMS to accurately estimate the cell state information and improve the stable operation of the energy storage system. In this paper, a new method to reconstruct OCV of LiFePO4 battery based on incremental capacity analysis (ICA) is proposed. Feature points closely related to battery aging are extracted based on ICA obtained from OCV curve. By using voltage curve transformation, the optimal transformation coefficients are calculated. Finally, the reconstructed OCV curve segments will be obtained by transforming the OCV curve of other cells in the pack. To verify the method, experiments are conducted with cells connected in series, and the results show that the maximum error of the reconstructed OCV curve does not exceed 2.5%.

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