LGSPJan 30, 2025

Battery State of Health Estimation Using LLM Framework

arXiv:2501.18123v115 citationsh-index: 8ISQED
Originality Incremental advance
AI Analysis

This addresses battery degradation prediction for electric vehicles, offering incremental improvements in accuracy and real-time processing.

This study tackled battery health monitoring for electric vehicles by introducing a transformer-based framework to estimate State of Health and predict Remaining Useful Life, achieving a Mean Absolute Error as low as 0.87% on lithium titanate battery data.

Battery health monitoring is critical for the efficient and reliable operation of electric vehicles (EVs). This study introduces a transformer-based framework for estimating the State of Health (SoH) and predicting the Remaining Useful Life (RUL) of lithium titanate (LTO) battery cells by utilizing both cycle-based and instantaneous discharge data. Testing on eight LTO cells under various cycling conditions over 500 cycles, we demonstrate the impact of charge durations on energy storage trends and apply Differential Voltage Analysis (DVA) to monitor capacity changes (dQ/dV) across voltage ranges. Our LLM model achieves superior performance, with a Mean Absolute Error (MAE) as low as 0.87\% and varied latency metrics that support efficient processing, demonstrating its strong potential for real-time integration into EVs. The framework effectively identifies early signs of degradation through anomaly detection in high-resolution data, facilitating predictive maintenance to prevent sudden battery failures and enhance energy efficiency.

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