Physics-Informed Neural Networks for Methane Sorption: Cross-Gas Transfer Learning, Ensemble Collapse Under Physics Constraints, and Monte Carlo Dropout Uncertainty Quantification
arXiv cs.LG / 4/16/2026
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Key Points
- The paper introduces a physics-informed transfer learning framework that adapts a hydrogen PINN to methane sorption prediction using Elastic Weight Consolidation, coal-specific feature engineering, and a three-phase curriculum for thermodynamic fine-tuning.
- Trained on 993 equilibrium measurements from 114 coal experiments (lignite to anthracite), the approach reports R²=0.932 on held-out coal samples and a 227% improvement versus pressure-only classical isotherms.
- Hydrogen pre-training is shown to improve training efficiency and accuracy, achieving 18.9% lower RMSE and 19.4% faster convergence than random initialization.
- The authors find that under physics constraints, deep ensembles tend to suffer “ensemble collapse” (performance degradation) because shared physics constraints narrow the solution space, while Monte Carlo Dropout provides well-calibrated uncertainty with minimal overhead.
- Interpretability analyses (SHAP/ALE) indicate that the learned representations remain physically aligned with known mechanisms, with moisture–volatile interactions and pressure–temperature coupling emerging as key drivers, including non-monotonic feature effects.
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