Publication result detail

Comprehensive machine learning approaches for modelling the state of charge of lithium-ion batteries

RAE, M.; OTTAVIANI, M.; CAPKOVÁ, D.; KAZDA, T.; SANTA MARIA, L.; RYAN, K.; PASSERINI, S.; SINGH, M.

Original Title

Comprehensive machine learning approaches for modelling the state of charge of lithium-ion batteries

English Title

Comprehensive machine learning approaches for modelling the state of charge of lithium-ion batteries

Type

WoS Article

Original Abstract

The advancement of lithium-ion batteries (LIBs) is vital for achieving net-zero emissions because it enables renewable energy integration, supports electric vehicle (EV) adoption, and promotes cost-effective and sustainable solutions. The growing demand for EVs and portable electronics has amplified the need for reliable battery management systems to ensure safety and performance. Machine learning (ML) methods for modelling the state of charge (SOC) in batteries are gaining traction owing to their adaptability to diverse datasets and lower computational demands. However, the challenge lies in selecting the most suitable ML architecture for a specific application. This study evaluates three ML approaches for SOC modelling in LIBs: multilayer perceptron (MLP), long short-term memory (LSTM), and nonlinear autoregressive with exogenous input (NARX) neural networks. The models were tested using an experimental dataset with multiple input variables, including electrochemical impedance spectroscopy data, voltage, and capacity from commercial LIB cells. The results show that MLP and LSTM perform effectively with smaller training datasets (14 samples), whereas the NARX model requires more extensive data (34 out of 67 samples) for accuracy. Additionally, the NARX model showed greater sensitivity to learning rate adjustments and hidden layer configurations, whereas MLP and LSTM maintained robust performance across varying parameters.

English abstract

The advancement of lithium-ion batteries (LIBs) is vital for achieving net-zero emissions because it enables renewable energy integration, supports electric vehicle (EV) adoption, and promotes cost-effective and sustainable solutions. The growing demand for EVs and portable electronics has amplified the need for reliable battery management systems to ensure safety and performance. Machine learning (ML) methods for modelling the state of charge (SOC) in batteries are gaining traction owing to their adaptability to diverse datasets and lower computational demands. However, the challenge lies in selecting the most suitable ML architecture for a specific application. This study evaluates three ML approaches for SOC modelling in LIBs: multilayer perceptron (MLP), long short-term memory (LSTM), and nonlinear autoregressive with exogenous input (NARX) neural networks. The models were tested using an experimental dataset with multiple input variables, including electrochemical impedance spectroscopy data, voltage, and capacity from commercial LIB cells. The results show that MLP and LSTM perform effectively with smaller training datasets (14 samples), whereas the NARX model requires more extensive data (34 out of 67 samples) for accuracy. Additionally, the NARX model showed greater sensitivity to learning rate adjustments and hidden layer configurations, whereas MLP and LSTM maintained robust performance across varying parameters.

Keywords

Machine learning, Deep artificial neural network, Li-ion batteries, State of charge, Mathematical modelling, Coarse dataset

Key words in English

Machine learning, Deep artificial neural network, Li-ion batteries, State of charge, Mathematical modelling, Coarse dataset

Authors

RAE, M.; OTTAVIANI, M.; CAPKOVÁ, D.; KAZDA, T.; SANTA MARIA, L.; RYAN, K.; PASSERINI, S.; SINGH, M.

Released

01.08.2025

Publisher

Elsevier

ISBN

0378-7753

Periodical

JOURNAL OF POWER SOURCES

Number

646

State

Kingdom of the Netherlands

Pages count

15

URL

BibTex

@article{BUT198533,
  author="Mitchell {Rae} and Michela {Ottaviani} and Dominika {Capková} and Tomáš {Kazda} and Luigi Jacopo {Santa Maria} and Kevin M. {Ryan} and Stefano {Passerini} and Mahakpreet {Singh}",
  title="Comprehensive machine learning approaches for modelling the state of charge of lithium-ion batteries",
  journal="JOURNAL OF POWER SOURCES",
  year="2025",
  number="646",
  pages="15",
  doi="10.1016/j.jpowsour.2025.236929",
  issn="0378-7753",
  url="https://www.sciencedirect.com/science/article/pii/S0378775325007657?via%3Dihub"
}