A transformer guided multi modal learning framework for predictive and causal assessment of thermal runaway in high energy batteries

Gajghate, Sameer Sheshrao and Noor, M. M. and Kumar, Subhash and Bansod, Premendra Janardan and Shelare, Sagar Dnyaneshwar and Nikam, Keval Chandrakant and Jathar, Laxmikant Dattatray and Dennison, Milon Selvam (2025) A transformer guided multi modal learning framework for predictive and causal assessment of thermal runaway in high energy batteries. Scientific Reports, 15 (37054). pp. 1-20. ISSN 2045-2322. (Published)

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Abstract

Machine Learning approaches from the present state either use unimodal data, unable to model elegant long spatial-temporal dependencies in warning systems or create early warning response datasets with limited quantitative interpretability sets. To address these shortcomings, this work introduces T-RUNSAFE, a multi-pronged, machine learning-based predictive prototype for thermal runaway assessment. The framework integrates five specialized modules: (1) ST-Former, a spatiotemporal transformer that encodes thermal gradients from thermal images and sensor logs using temporal self-attention over LSTMs, thus is superior to traditional LSTMs for capturing evolving thermal patterns; (2) FUSE-GEN, adversarial trained dual-encoder variational autoencoder, fusing acoustic emission (AE) signals and thermal embeddings into a shared latent space for earlystage internal degradation detection; (3) DEGRA-GNN, a graph attention network that capitalizes on battery electrode topology to model the spatial propagation of thermal faults; (4) CAUS-RUN, a counterfactual simulation engine employing structural causal models to attribute risk to specific spatial zones for interpretability; and (5) SENSOR-RL, a reinforcement learning module optimizing sensor sampling policies on real-time risk levels that cuts down on sensor power while still holding to detection accuracy. The experimental results show great early prediction accuracy (AUC-ROC > 0.96), high spatial degradation localization accuracy (93.5%), and a 37% decrease in power consumption of sensing. T-RUNSAFE predicts, interprets, and optimizes resource utilization for thermal runaway risk assessment. By integrating deep learning, physics-informed modeling, and causal reasoning, it enables real-time battery safety monitoring. Although challenges remain regarding sensor cost, computational overhead, and chemistry generalization, the study demonstrates the feasibility of advanced onboard battery management systems tailored for next-generation energy applications.

Item Type: Article
Additional Information: Indexed by Scopus
Uncontrolled Keywords: Battery safety; Graph neural networks; Multi-Modal learning; Process; Thermal runaway; Transformer models
Subjects: T Technology > TJ Mechanical engineering and machinery
Faculty/Division: Faculty of Mechanical and Automotive Engineering Technology
Centre for Research in Advanced Fluid & Processes (Fluid Centre)
Depositing User: PM Ts. Dr. Muhamad Mat Noor
Date Deposited: 06 Apr 2026 03:13
Last Modified: 06 Apr 2026 03:13
URI: https://umpir.ump.edu.my/id/eprint/47539
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