Title :
Health Monitoring of Li-Ion Battery Systems: A Median Expectation Diagnosis Approach (MEDA)
Author :
Khalid, Haris M. ; Ahmed, Qadeer ; Peng, Jimmy C.-H
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Masdar Inst. of Sci. & Technol., Masdar, United Arab Emirates
Abstract :
The operations of Li-ion battery management system (BMS) are highly dependent on installed sensors. Malfunctions in sensors could lead to a deterioration in battery performance. This paper proposed an effective health monitoring scheme using a median expectation-based diagnosis approach (MEDA). MEDA calculates the median of a possible set of values, rather than taking their weighted average as in the case of a standard expected mean operator. Furthermore, a smoother was developed to capture important patterns in the estimation. The resulting filter was first derived using an one-dimensional (1-D) system example, where the iterative convergence of median-based proposed filter was proved. Performance evaluations were subsequently conducted by analyzing real-time measurements collected from Li-ion battery cells used in hybrid electric vehicles (HEV) and plug-in HEVs (PHEV) duty cycles. Results showed that the proposed filter was more effective and less sensitive to small sample size and curves with outliers.
Keywords :
battery management systems; battery powered vehicles; convergence of numerical methods; hybrid electric vehicles; iterative methods; median filters; secondary cells; BMS; Li-ion battery management system health monitoring; MEDA; PHEV; hybrid electric vehicles; median expectation diagnosis approach; median-based proposed filter iterative convergence; plug-in HEV; Batteries; Coherence; Covariance matrices; Hybrid electric vehicles; Kalman filters; Noise; Sensors; Battery Management System (BMS); Battery diagnosis; Kalman filter; battery management system (BMS); expected value; lithium-ion batteries; mean; median;
Journal_Title :
Transportation Electrification, IEEE Transactions on
DOI :
10.1109/TTE.2015.2426431