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A Hybrid System and Method for Estimating State of Charge of a Battery

Journal Article
02-14-03-0031
ISSN: 1946-391X, e-ISSN: 1946-3928
Published September 09, 2021 by SAE International in United States
A Hybrid System and Method for Estimating State of Charge of a Battery
Citation: Chakraborty, D., Ghivari, M., Datar, M., and Gogate, A., "A Hybrid System and Method for Estimating State of Charge of a Battery," SAE Int. J. Commer. Veh. 14(3):375-390, 2021, https://doi.org/10.4271/02-14-03-0031.
Language: English

Abstract:

This article proposes a novel approach of a hybrid system of physics and data-driven modeling for accurately estimating the state of charge (SOC) of a battery. State of Charge (SOC) is a measure of the remaining battery capacity and plays a significant role in various vehicle applications like charger control and driving range predictions. Hence the accuracy of the SOC is a major area of interest in the automotive sector. The method proposed in this work takes the state-of-the-art practice of Kalman filter (KF) and merges it with intelligent capabilities of machine learning using neural networks (NNs). The proposed hybrid system comprises a physics-based battery model and a plurality of NNs eliminating the need for the conventional KF while retaining its features of the predictor-corrector mechanism of the variables to reduce the errors in estimation. This methodology offers the advantage of improved accuracy of the SOC estimation and increases robustness to retain this accuracy over a wide range of dynamic data.