Hybrid Neural Networks for Enhanced Predictions of Remaining Useful Life in Lithium-Ion Batteries

Abstract

With the proliferation of electric vehicles (EVs) and the consequential increase in EV battery circulation, the need for accurate assessments of battery health and remaining useful life (RUL) is paramount, driven by environmentally friendly and sustainable goals. This study addresses this pressing concern by employing data-driven methods, specifically harnessing deep learning techniques to enhance RUL estimation for lithium-ion batteries (LIB). Leveraging the Toyota Research Institute Dataset, consisting of 124 lithium-ion batteries cycled to failure and encompassing key metrics such as capacity, temperature, resistance, and discharge time, our analysis substantially improves RUL prediction accuracy. Notably, the convolutional long short-term memory deep neural network (CLDNN) model and the transformer LSTM (temporal transformer) model have emerged as standout remaining useful life (RUL) predictors. The CLDNN model, in particular, achieved a remarkable mean absolute error (MAE) of 84.012 and a mean absolute percentage error (MAPE) of 25.676. Similarly, the temporal transformer model exhibited a notable performance, with an MAE of 85.134 and a MAPE of 28.7932. These impressive results were achieved by applying Bayesian hyperparameter optimization, further enhancing the accuracy of predictive methods. These models were bench-marked against existing approaches, demonstrating superior results with an improvement in MAPE ranging from 4.01% to 7.12%.

Publication DOI: https://doi.org/10.3390/batteries10030106
Divisions: College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies > Applied AI & Robotics
College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies
Aston University (General)
Funding Information: This research was funded by The Faraday Institution grant number “FIRG057” and UK Research and Innovation grant number “101104241”.
Additional Information: Copyright © 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Uncontrolled Keywords: battery management systems,EV battery recycling,lithium-ion batteries,battery degradation,deep learning
Publication ISSN: 2313-0105
Data Access Statement: The dataset used in this study, was published by the Toyota Research Institute, is accessible at https://data.matr.io/ and was retrieved on 10 June 2023.
Last Modified: 01 Sep 2025 07:39
Date Deposited: 29 Aug 2025 15:29
Full Text Link:
Related URLs: https://www.mdp ... 3-0105/10/3/106 (Publisher URL)
PURE Output Type: Article
Published Date: 2024-03
Published Online Date: 2024-03-15
Accepted Date: 2024-03-06
Authors: Rastegarparnah, Alireza (ORCID Profile 0000-0003-4264-6857)
Asif, Mohammed Eesa
Stolkin, Rustam

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