Authors | رمضان هاونگی |
---|---|
Journal | Electrical Engineering |
Page number | ۱۰۰۱-۱۰۱۷ |
Serial number | ۱۰۴ |
Volume number | ۲ |
IF | 0.309 |
Paper Type | Full Paper |
Published At | ۲۰۲۲ |
Journal Grade | ISI |
Journal Type | Typographic |
Journal Country | Iran, Islamic Republic Of |
Journal Index | JCR،Scopus |
Abstract
The state of charge (SOC) estimation is the core of any battery management system (BMS). However, the accurate SOC estimation is always a challenging task because it cannot be measured directly with sensors. An adaptive robust unscented Kalman flter (ARUKF) with recursive least square (RLS) is proposed to improve the robustness and accuracy of SOC estimation in this paper. In the proposed method, RLS is used for identifcation of the parameters of battery. Then, based on the identifed parameters, ARUKF is designed to estimate the SOC of battery. The ARUKF is developed using embedding the unscented transformation (UT) technique and H∞ fltering into the unscented Kalman flter (UKF). The knowledge of noise distributions does not require in the proposed method, and the noises can be non-Gaussian, so it has less limitation in actual applications. In the proposed method, to improve more performance, the covariance of measurement and process noise are tuned. The process and measurement noise covariance can be adaptively tuned that improves the stability and accuracy of flter. The proposed method is evaluated under diferent real-time conditions. The results of proposed method are compared with those of extended Kalman flter (EKF) and UKF. The results show that the proposed method can achieve better SOC estimation accuracy, especially when the noise statistics are unknown and non-Gaussian.
tags: State of charge · Adaptive robust unscented Kalman flter · Lithium-ion batteries · Recursive least square