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A deep learning approach to optimize remaining useful life prediction for Li-ion batteries

M. Usman Iftikhar, Muhammad Shoaib, Ayesha Altaf, Faiza Iqbal, Santos Gràcia Villar, Luís Alonso Dzul López, Imran Ashraf

2024Scientific Reports35 citationsDOIOpen Access PDF

Abstract

Accurately predicting the remaining useful life (RUL) of lithium-ion (Li-ion) batteries is vital for improving battery performance and safety in applications such as consumer electronics and electric vehicles. While the prediction of RUL for these batteries is a well-established field, the current research refines RUL prediction methodologies by leveraging deep learning techniques, advancing prediction accuracy. This study proposes AccuCell Prodigy, a deep learning model that integrates auto-encoders and long short-term memory (LSTM) layers to enhance RUL prediction accuracy and efficiency. The model's name reflects its precision ("AccuCell") and predictive strength ("Prodigy"). The proposed methodology involves preparing a dataset of battery operational features, split using an 80-20 ratio for training and testing. Leveraging 22 variations of current (critical parameter) across three Li-ion cells, AccuCell Prodigy significantly reduces prediction errors, achieving a mean square error of 0.1305%, mean absolute error of 2.484%, and root mean square error of 3.613%, with a high R-squared value of 0.9849. These results highlight its robustness and potential for advancing battery health management.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningAdvanced Battery Technologies ResearchReliability and Maintenance OptimizationAdvancements in Battery Materials