E-COSM 2024 Paper Abstract

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Ma, Yan (Jilin university), Li, Jiaqi (Jilin University), Gao, Jinwu (Jilin University)

Remaining Useful Life Prediction of Lithium Battery Based on Multi-Decoder Graph Autoencoder and Transformer Network

Scheduled for presentation during the Invited session "Estimation and Prediction" (FrB1), Friday, November 1, 2024, 10:50−11:10, Room T1

7th IFAC Conference on Engine and Powertrain Control, Simulation and Modeling, Oct 30 - Nov 1, 2024, Dalian, China

This information is tentative and subject to change. Compiled on January 2, 2025

Keywords Batteries, Energy Storage Systems

Abstract

Remaining useful life (RUL) of lithium-ion battery is important to maintain safe and reliable battery operation. Health indicators (HIs) are key features for predicting RUL during battery aging, whereas current methods only consider their link to capacity. In order to learn the intrinsic connection between the aging features, this paper proposes a RUL prediction method based on multi decoder graph autoencoder (MGAE) and transformer network, which considers both the link between aging characteristics and the link between aging characteristics and capacity degradation. First, multiple types of aging features are extracted during battery charging and discharging, and HIs are connected into a graph structure by pearson correlation analysis. Thereby, feature information with high correlation is linked through the topology of the graph. Subsequently, the feature graph and feature matrix are input to the graph autoencoder to extract deep features. In graph decoder part, this paper improves to a multi decoder in order to update and select features by the updated graph structure. Finally, new feature matrix is fed into transformer, and RUL prediction is realized by parallel processing through the multi-head self-attention mechanism. The effectiveness of the proposed method is verified by NASA dataset and compared with other advanced methods. The results show that the method achieves average RE of 0.09 and maintains RMSE of 0.01.

 

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