Joint Estimation of State of Charge and Capacity throughout the Full Service Life Cycle for Li-Ion Batteries

2026-01-7021

2/27/2026

Authors
Abstract
Content
Accurate SOC and capacity estimation is essential for the safe operation of lithium-ion batteries. However, model parameters drift due to temperature variations and aging. This study proposes a migration-model-based method for joint estimation of SOC and capacity over a wide range of temperatures and degradation levels. The WSPF algorithm identifies migration factors in real time and applies them to estimate SOC and capacity under nonlinear, non-Gaussian conditions. Validation under various test conditions demonstrates clear advantages. Compared to EKF, the migration-model-based algorithm reduces the maximum RMSE of SOC estimation to 0.55%. For capacity estimation, it achieves a maximum RMSE of 1.15%. The estimation accuracy remains high throughout temperature changes and aging, highlighting the robustness and applicability of the proposed method for real-world battery management systems.
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Citation
Liu, W., Chen, Z., Wei, F., and Shen, J., "Joint Estimation of State of Charge and Capacity throughout the Full Service Life Cycle for Li-Ion Batteries," SAE Technical Paper 2026-01-7021, 2026, https://doi.org/10.4271/2026-01-7021.
Additional Details
Publisher
Published
Feb 27
Product Code
2026-01-7021
Content Type
Technical Paper
Language
English