UPDF AI

Machine Learning Analysis of Lithium-Ion Battery Behavior and Prediction

M. Fattah,Mohammed Moutaib,3 Authors,Moulhime El bekkali

2024 · DOI: 10.1109/ICCSC62074.2024.10617352
IEEE International Conference on Circuits and Systems for Communications · 5 Citations

TLDR

Analysis of lithium-ion battery datasets from NASA’s Prognostics Center provides valuable insights into battery behavior and optimization strategies for applications such as electric vehicles and renewable energy systems.

Abstract

This paper analyzes lithium-ion battery datasets from NASA’s Prognostics Center, focusing on battery behavior and predictive modeling. Data preprocessing reveals distinct characteristics in voltage load and capacity distribution and insights into battery degradation and temperature profiles. The study also explores correlations between variables and utilizes a Random Forest algorithm to predict battery performance accurately, achieving low Root Mean Squared Error (RMSE) and high Coefficient of Determination ($\mathrm{R}^{2}$) values. This research provides valuable insights into battery behavior and optimization strategies for applications such as electric vehicles and renewable energy systems.

Cited Papers
Citing Papers