Lithium-ion batteries soh estimation, based on support-vector regression and a feature-based approach

Iacopo Marri, Emil Petkovski,Loredana Cristaldi, Marco Faifer
Abstract:
Lithium-Ion batteries, have become enormously used in many systems and applications, and are the most widespread energy storage system. Optimizing the usage of batterie is therefore very important to increase the safety of systems like electric vehicles or portable devices, to reduce economic loss in industrial environments, and to increase their availability. An accurate State of Health (SoH) estimation is important since it allows us to know battery conditions and make an appropriate use of it, and it improves the accuracy of other diagnostic measures, like State of Charge (SoC). In this paper, an approach for SoH estimation is proposed, based on Support Vector Regression machine learning algorithm and a smart feature extraction process, finding a good trade-off between applicability, light computation effort, and accuracy of results. Features selection and parameters tuning are discussed, and performances are measured on a dataset from the Prognostics Center of Excellence at NASA, considering 3 batteries of the dataset.
Keywords:
SoH; machine learning; lithium-ion batteries; degradation diagnostic
Download:
IMEKO-TC10-2022-021.pdf
DOI:
10.21014/tc10-2022.021
Event details
IMEKO TC:
TC10
Event name:
TC10 Conference 2022
Title:

18th IMEKO TC10 Conference "Measurement for Diagnostics, Optimisation and Control to Support Sustainability and Resilience"

Place:
Warsaw, POLAND
Time:
26 September 2022 - 27 September 2022