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.

Abstract

Accurate methane sorption prediction across heterogeneous coal ranks requires models that combine thermodynamic consistency, efficient knowledge transfer across data-scarce geological systems, and calibrated uncertainty estimates, capabilities that are rarely addressed together in existing frameworks. We present a physics-informed transfer learning framework that adapts a hydrogen sorption PINN to methane sorption prediction via Elastic Weight Consolidation, coal-specific feature engineering, and a three-phase curriculum that progressively balances transfer preservation with thermodynamic fine-tuning. Trained on 993 equilibrium measurements from 114 independent coal experiments spanning lignite to anthracite, the framework achieves R2 = 0.932 on held-out coal samples, a 227% improvement over pressure-only classical isotherms, while hydrogen pre-training delivers 18.9% lower RMSE and 19.4% faster convergence than random initialization. Five Bayesian uncertainty quantification approaches reveal a systematic divergence in performance across physics-constrained architectures. Monte Carlo Dropout achieves well-calibrated uncertainty at minimal overhead, while deep ensembles, regardless of architectural diversity or initialization strategy, exhibit performance degradation because shared physics constraints narrow the admissible solution manifold. SHAP and ALE analyses confirm that learned representations remain physically interpretable and aligned with established coal sorption mechanisms: moisture-volatile interactions are most influential, pressure-temperature coupling captures thermodynamic co-dependence, and features exhibit non-monotonic effects. These results identify Monte Carlo Dropout as the best-performing UQ method in this physics-constrained transfer learning framework, and demonstrate cross-gas transfer learning as a data-efficient strategy for geological material modeling.