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State of health and remaining useful life prediction of lithium-ion batteries with conditional graph convolutional network

Yupeng Wei, Dazhong Wu

2023Expert Systems with Applications70 citationsDOIOpen Access PDF

Abstract

Graph convolutional networks have been increasingly used to estimate the state of health and predict the remaining useful life of batteries. However, there are two issues with conventional graph convolutional networks. Firstly, they ignore the correlation between features and the state of health or remaining useful life. Secondly, they do not consider temporal relationships among features when projecting aggregated temporal features into another dimensional space. To address these issues, two types of undirected graphs are introduced to simultaneously consider the correlation among features and the correlation between features and the state of health or remaining useful life. A conditional graph convolution network is built to handle these graphs, incorporating a dual spectral graph convolutional operation to analyze the topological structures of these graphs. Additionally, the dilated convolutional operation is integrated with the proposed conditional graph convolution network to account for the temporal correlation among the aggregated features. Two battery datasets were used to evaluate the effectiveness of the presented method, resulting in a minimum mean absolute remaining useful life prediction error of 3.219. Moreover, the proposed method outperforms methods reported in the literature, such as Gaussian processes and other deep learning methods.

Topics & Concepts

Computer scienceGraphConvolution (computer science)CorrelationGaussianArtificial intelligencePattern recognition (psychology)Theoretical computer scienceMachine learningMathematicsArtificial neural networkGeometryPhysicsQuantum mechanicsAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsReliability and Maintenance Optimization