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State-of-Health prediction of lithium-ion batteries based on a low dimensional Gaussian Process Regression

Sebastian Pohlmann, Ali Mashayekh, Florian Stroebl, Dominic Karnehm, Manuel Kuder, Antje Neve, Thomas Weyh

2024Journal of Energy Storage26 citationsDOIOpen Access PDF

Abstract

An accurate determination of the condition of a battery is a key challenge in operation. As the performance of lithium-ion batteries is degrading over time, an accurate prediction of the State-of-Health would improve the overall efficiency and safety. This paper presents a prediction method for the State-of-Health based on a Gaussian Process Regression with an automatic relevance determination kernel in a single model for three different types of battery cells. After reducing the dimension of the problem and a sensitivity analysis of the features, the model is trained, validated, and further tested on unseen data. A minimum test error is obtained with a mean absolute error of 1.33%. Combined with the low uncertainty of the prediction results, this shows the applicability and the great potential of forecasting the condition of a battery using data-driven methods.

Topics & Concepts

KrigingGaussian processLithium (medication)IonRegressionProcess (computing)State (computer science)State of healthComputer scienceGaussianStatisticsArtificial intelligenceMachine learningMathematicsAlgorithmChemistryPhysicsMedicineBattery (electricity)Computational chemistryThermodynamicsInternal medicineOperating systemPower (physics)Organic chemistryAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsReliability and Maintenance Optimization
State-of-Health prediction of lithium-ion batteries based on a low dimensional Gaussian Process Regression | Litcius