iMOE: prediction of second-life battery degradation trajectory using interpretable mixture of experts
Artikel i vetenskaplig tidskrift, 2026

Retired electric vehicle batteries offer immense potential to support energy infrastructure stability in underdeveloped regions through second-life use, but uncertainties in battery degradation behaviors pose major safety concerns. This work proposes an interpretable mixture of experts (iMOE) network that predicts battery degradation trajectories using partial, field-accessible signals in a single cycling operation. iMOE leverages an adaptive multi-degradation prediction module to classify battery degradation modes using expert weight synthesis learned from battery capacity-voltage and relaxation data. The module produces latent degradation trend embeddings, which are input to a use-dependent recurrent network for long-term degradation trajectory prediction. Validated on three typical use patterns (i.e. consistent operating histories, deeply aged batteries with unknown prior use, and uncertain second-life conditions, including 295 batteries, 93 use conditions, and 84,213 cycles), iMOE achieves an average mean absolute percentage errors (MAPE) of 0.95% with a 0.43 ms inference time for life-long battery degradation trajectory prediction. Compared to state-of-the-art Informer and PatchTST, it reduces computational time and MAPE by 50% and 77%, respectively. Compatible with data sampling in random state of charge regions, iMOE supports a 150-cycle time-horizon degradation trajectory prediction with 1.50% and 6.26% MAPE on average and at maximum, respectively. Notably, iMOE can operate effectively even with pruned 5MB training data while retaining 0.95% MAPE. Broadly, this network offers a deployable, history-free solution for battery degradation trajectory prediction at the time of second-life deployment, redefining how second-life energy storage systems are sensed, evaluated, controlled, and integrated for sustainable energy infrastructures at scale.

Författare

Xinghao Huang

Tsinghua University

Shengyu Tao

Chalmers, Elektroteknik, System- och reglerteknik

Chen Liang

Tsinghua University

Yining Tang

Stanford University

Jiawei Chen

Beijing University of Technology

Junzhe Shi

University of California

Yuqi Li

Stanford University

Bizhong Xia

Tsinghua University

Guangmin Zhou

Tsinghua University

Xuan Zhang

Ctr Int Innovat Technol & Sci

Tsinghua University

Nature Communications

2041-1723 (ISSN) 20411723 (eISSN)

Vol. 17 1 2549

Ämneskategorier (SSIF 2025)

Annan elektroteknik och elektronik

DOI

10.1038/s41467-026-69369-1

PubMed

41663415

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Senast uppdaterat

2026-03-30