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)
J 2025 SR Sameer M.M.Noor Thermal Runway HE Batt RDU240117.pdf - Published Version
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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 |
| Statistic Details: | View Download Statistic |

