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Research on Lithium-Ion Battery State of Health Prediction Based on XGBoost–ARIMA Joint Optimization

Chen Fei, Zhuo Lu, Weiwei Jiang, Liang Zhao, Fan Zhang

2025Batteries11 citationsDOIOpen Access PDF

Abstract

Due to the complex electrochemical reactions within lithium-ion batteries and the uncertainties with respect to external environmental factors, accurately assessing their State of Health (SOH) remains a significant challenge. To improve the precision of SOH estimation, we propose an intelligent estimation approach that integrates data visualization and advanced machine learning techniques. Initially, the battery data are visualized using matplotlib to extract key features such as temperature difference, voltage difference, and average voltage. Subsequently, an XGBoost-based model is constructed to perform the initial SOH estimation. To further enhance the estimation accuracy, we introduce the Autoregressive Integrated Moving Average Model (ARIMA) model for post-estimation correction, effectively refining the preliminary results. Experimental results demonstrate that the proposed XGBoost–ARIMA model outperforms traditional algorithms, including Linear Regression (LR), Random Forest (RF), Support Vector Machine (SVM), and K-Nearest Neighbor (KNN), not only in estimation accuracy but also in generalization capability, showing significant improvements over five other regression models.

Topics & Concepts

Joint (building)Autoregressive integrated moving averageBattery (electricity)Computer scienceState of healthLithium (medication)Lithium-ion batteryState (computer science)State of chargeMachine learningTime seriesAlgorithmPsychologyEngineeringStructural engineeringPhysicsQuantum mechanicsPower (physics)PsychiatryAdvanced Battery Technologies ResearchMachine Fault Diagnosis TechniquesAdvancements in Battery Materials
Research on Lithium-Ion Battery State of Health Prediction Based on XGBoost–ARIMA Joint Optimization | Litcius