SoC estimation based on adaptive EKF with colored noise

The paper utilizes a novel battery model based on the electrical features of LiFePO4 battery, because Kalman filter algorithm(KF) is largely dependent on system model. Measurements of battery state are easily disturbed by colored noise which is high relevance in working condition, and the paper studies that the system noise satisfy one-order AR model. The paper proposes an adaptive extended Kalman filter with colored noise(CN-AEKF). The simulation proves that the algorithm can accurately estimate SoC and possess algorithm stability. At the same time, the algorithm solves the sensitivity of initial covariance value of system noise, improving the adaptivity of estimating SoC.

[1]  Edi Leksono,et al.  State of charge (SoC) estimation of LiFePO4 battery module using support vector regression , 2015, Proceedings of the Joint International Conference on Electric Vehicular Technology and Industrial, Mechanical, Electrical and Chemical Engineering (ICEVT & IMECE).

[2]  Tao Zhang,et al.  A self-adaptive scaling parameter selection algorithm for the Unscented Kalman Filter , 2015, 2015 Chinese Automation Congress (CAC).

[3]  Kai Zhao,et al.  Evaluation on State of Charge Estimation of Batteries With Adaptive Extended Kalman Filter by Experiment Approach , 2013, IEEE Transactions on Vehicular Technology.

[4]  Guangzhao Luo,et al.  Lithium Polymer Battery State-of-Charge Estimation Based on Adaptive Unscented Kalman Filter and Support Vector Machine , 2016, IEEE Transactions on Power Electronics.

[5]  Dirk Uwe Sauer,et al.  Advanced mathematical methods of SOC and SOH estimation for lithium-ion batteries , 2013 .