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Li-ion Battery State of Charge Estimation Using...
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Li-ion Battery State of Charge Estimation Using Long Short-Term Memory Recurrent Neural Network with Transfer Learning

Abstract

To develop more efficient, reliable and affordable electrified vehicles, it is very desirable to improve the accuracy of the battery state of charge (SOC) estimation. However, due to the nonlinear, temperature and state of charge dependent behaviour of Li-ion batteries, SOC estimation is still a significant engineering challenge. Traditional methods such as the Kalman filter require significant characterization testing, model development, and filter design and tuning efforts which must be tailored to each battery type. To help solve this problem, this work proposes a novel method to address SOC estimation using a deep neural network (DNN) with Transfer Learning (TL). Transfer learning is a method that uses the learnable parameters from a trained DNN to help train another DNN. Transfer learning has the potential to improve SOC estimation as well as reduce DNN training time and data required. Results show up to 64% better accuracy and similar or better accuracy with a reduced amount of training data.

Authors

Vidal C; Kollmeyer P; Chemali E; Emadi A

Volume

00

Pagination

pp. 1-6

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

June 19, 2019

DOI

10.1109/itec.2019.8790543

Name of conference

2019 IEEE Transportation Electrification Conference and Expo (ITEC)
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