Machine learning technique improves analysis and prediction of lithium-ion battery life

Graphical abstract. Credit: Energy and AI (2020). DOI: 10.1016/j.egyai.2020.100006

A machine learning technique to improve analysis and prediction of lithium-ion battery life has been developed by researchers in Scotland. Gonçalo dos Reis and colleagues at the University of Edinburgh and Heriot-Watt University, Edinburgh, U.K., report the development and application of their procedure in an article in the open access journal Energy and AI. The ability to predict the course of a battery’s decline early in its life cycle could improve battery management, testing and design.

Lithium-ion batteries are the most common power sources for a variety of personal electronic devices including cell phones and laptops. Their electrical capacity degrades over time, but not in a linear manner. Instead, after a lengthy period of slow and almost linear decline, capacity tends to begin to fall in an ever-increasing, non-linear deterioration. When plotted as a graph of capacity against usage cycles, the most obvious bend in the curve of decline is called the knee-point.

The Edinburgh team have defined a procedure to predict the degradation curve and knee-point at an early stage, without having to monitor the fall in capacity over the full life cycle. This could assist in the development of new batteries and in monitoring the health of a battery.

A key aspect of the new method is the identification of an earlier point in the capacity curve, which the researchers call the knee-onset point. This is a newly identified initial stage of decline towards the knee-point. The researchers’ algorithm, developed using machine learning, can use the knee-onset point to predict the knee-point and also the end of effective battery life. The algorithm allows each of these features to identify the timing of the others.

Better battery management, assisted by this new method, could include prioritizing and optimizing the energy available to key applications and optimizing recharging cycles.

More information:
Paula Fermín-Cueto et al, Identification and machine learning prediction of knee-point and knee-onset in capacity degradation curves of lithium-ion cells, Energy and AI (2020). DOI: 10.1016/j.egyai.2020.100006

Citation:
Machine learning technique improves analysis and prediction of lithium-ion battery life (2022, December 14)
retrieved 14 December 2022
from https://techxplore.com/news/2022-12-machine-technique-analysis-lithium-ion-battery.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

For all the latest Technology News Click Here 

 For the latest news and updates, follow us on Google News

Read original article here

Denial of responsibility! TechNewsBoy.com is an automatic aggregator around the global media. All the content are available free on Internet. We have just arranged it in one platform for educational purpose only. In each content, the hyperlink to the primary source is specified. All trademarks belong to their rightful owners, all materials to their authors. If you are the owner of the content and do not want us to publish your materials on our website, please contact us by email – [email protected]. The content will be deleted within 24 hours.