Future demands high power and high energy density devices that can be sustainably built and easily maintained. It is seen that among various energy storage devices, the demanding role lithium-ion batteries play in powering electronic gadgets to electric vehicles, is highly significant. Hence, the researchers around the world are trying to solve the riddles of the lithium-ion batteries and make it more efficient. One such problem that researchers are trying to solve is battery degradation and capacity fade. In this work, we made a battery forecasting model that can predict the capacity fade using electrochemical impedance spectroscopy (EIS) data. Two machine learning techniques like, support vector regression (SVR) and multi-linear regression (MLR) were utilized to analyse the data and predict the capacity fade for lithium-ion battery. Principal component analysis was also carried out to determine the most relevant feature from the data. From the analysis it was found that that SVR has a better prediction accuracy than MLR or pre-existing Gaussian process regression (GPR) results and among the two kernels of support vector regression, radial basis function (rbf) kernel has better prediction accuracy with R 2 score of 0.9194 than the linear kernel with R 2 score of 0.6559.
CITATION STYLE
Penjuru, N. M. H., Reddy, G. V., R. Nair, M., Sahoo, S., Mayank, Jiang, J., … Roy, T. (2022). Machine Learning Aided Predictions for Capacity Fade of Li-Ion Batteries. Journal of The Electrochemical Society, 169(5), 050535. https://doi.org/10.1149/1945-7111/ac7102
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