Abstract
Battery Management Systems (BMSs) are used to manage the utilization of batteries and their operation in Electric and Hybrid Vehicles. It is imperative for efficient and safe operation of batteries to be able to accurately estimate the State of Charge (SoC), State of Health (SoH) and State of Power (SoP). The SoC and SoH estimation must remain robust and accurate despite aging and in presence of noise, uncertainties and sensor biases. This paper introduces a robust adaptive filter referred to as the Adaptive Smooth Variable Structure Filter with a time-varying Boundary Layer (ASVSF-VBL) for the estimation of the SoC and SoH in electrified vehicles. The internal model of the filter is a third-order equivalent circuit model (ECM) and its state vector is augmented to enable estimation of the internal resistance and current bias. It is shown that system and measurement noise covariance adaptation for the SVSF-VBL approach improves the performance in state estimation of a battery. The estimated internal resistance is then utilized to improve determination of the battery’s SoH. The effectiveness of the proposed method is validated using experimental data from tests on Lithium Polymer automotive batteries. The results indicate that the SoC estimation error can remain within less than 2% over the full operating range of SoC along with an accurate estimation of SoH.
Highlights
Lithium-ion Batteries are extensively used for energy storage in Electric (EVs) and Hybrid Electric (HEVs) Vehicles due to their high energy and high power densities
The Adaptive Smooth Variable Structure Filter with Variable Boundary Layer (ASVSFVBL) strategy is introduced for state estimation (SoC and State of Health (SoH)) in presence of changing statics of noise and uncertainties
In addition to the State of Charge (SoC) and SoH, the state vector was augmented to estimate the bias in current measurement and the battery’s internal resistance
Summary
Lithium-ion Batteries are extensively used for energy storage in Electric (EVs) and Hybrid Electric (HEVs) Vehicles due to their high energy and high power densities. Model-based strategies use filters and observers in conjunction with battery models to provide a real-time indicator for SoH estimation [11,12]. More advancements on SVSF strategy have been presented to boost the efficiency of the SVSF including the second-order SVSF, square-root SVSF, its combination with different filters such as KF, EKF, UKF, CKF, PF and more [29,30,31] These methods enhance the accuracy of state estimation, they do not consider adaptability. Different forms of multiple model methods have been proposed for state and parameter estimation of batteries [15,16,35]. The Adaptive Smooth Variable Structure Filter with Variable Boundary Layer (ASVSFVBL) strategy is introduced for state estimation (SoC and SoH) in presence of changing statics of noise and uncertainties.
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