title: Battery GraphNets Relational Learning for Lithiumion BatteriesLiBs Life Estimation

publish date:

2024-08-14

authors:

Sakhinana Sagar Srinivas et.al.

paper id

2408.07624v1

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abstracts:

Battery life estimation is critical for optimizing battery performance and guaranteeing minimal degradation for better efficiency and reliability of battery-powered systems. The existing methods to predict the Remaining Useful Life(RUL) of Lithium-ion Batteries (LiBs) neglect the relational dependencies of the battery parameters to model the nonlinear degradation trajectories. We present the Battery GraphNets framework that jointly learns to incorporate a discrete dependency graph structure between battery parameters to capture the complex interactions and the graph-learning algorithm to model the intrinsic battery degradation for RUL prognosis. The proposed method outperforms several popular methods by a significant margin on publicly available battery datasets and achieves SOTA performance. We report the ablation studies to support the efficacy of our approach.

QA:

coming soon

编辑整理: wanghaisheng 更新日期:2024 年 8 月 16 日