LGAISYAPJun 27, 2024

Gaussian process-based online health monitoring and fault analysis of lithium-ion battery systems from field data

arXiv:2406.19015v322 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses critical safety and sustainability issues for battery system operators by providing efficient online monitoring tools, though it is incremental as it builds on existing Gaussian process methods.

The researchers tackled health monitoring and fault analysis in lithium-ion battery systems by applying Gaussian process resistance models to field data from 29 battery systems (232 cells, 131 million data rows), effectively separating time-dependent and operating point-dependent resistance and enabling online monitoring with probabilistic fault detection rules.

Health monitoring, fault analysis, and detection are critical for the safe and sustainable operation of battery systems. We apply Gaussian process resistance models on lithium iron phosphate battery field data to effectively separate the time-dependent and operating point-dependent resistance. The data set contains 29 battery systems returned to the manufacturer for warranty, each with eight cells in series, totaling 232 cells and 131 million data rows. We develop probabilistic fault detection rules using recursive spatiotemporal Gaussian processes. These processes allow the quick processing of over a million data points, enabling advanced online monitoring and furthering the understanding of battery pack failure in the field. The analysis underlines that often, only a single cell shows abnormal behavior or a knee point, consistent with weakest-link failure for cells connected in series, amplified by local resistive heating. The results further the understanding of how batteries degrade and fail in the field and demonstrate the potential of efficient online monitoring based on data. We open-source the code and publish the large data set upon completion of the review of this article.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes