Physics-informed mixture of experts network for interpretable battery degradation trajectory computation amid second-life complexities
Xinghao Huang, Shengyu Tao, Chen Liang, Jiawei Chen, Junzhe Shi, Yuqi Li, Bizhong Xia, Guangmin Zhou, Xuan Zhang

TL;DR
This paper introduces PIMOE, a physics-informed neural network that accurately predicts battery degradation trajectories using limited data, significantly improving efficiency and interpretability for second-life battery applications.
Contribution
The paper presents a novel physics-informed mixture of experts network that combines degradation mode classification with long-term trajectory prediction, enhancing accuracy and computational efficiency.
Findings
Achieves 0.88% MAPE in degradation prediction
Reduces computational time by 50% compared to state-of-the-art models
Operates effectively with limited and pruned training data
Abstract
Retired electric vehicle batteries offer immense potential to support low-carbon energy systems, but uncertainties in their degradation behavior and data inaccessibilities under second-life use pose major barriers to safe and scalable deployment. This work proposes a Physics-Informed Mixture of Experts (PIMOE) network that computes battery degradation trajectories using partial, field-accessible signals in a single cycle. PIMOE leverages an adaptive multi-degradation prediction module to classify degradation modes using expert weight synthesis underpinned by capacity-voltage and relaxation data, producing latent degradation trend embeddings. These are input to a use-dependent recurrent network for long-term trajectory prediction. Validated on 207 batteries across 77 use conditions and 67,902 cycles, PIMOE achieves an average mean absolute percentage (MAPE) errors of 0.88% with a 0.43 ms…
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