LGCOMP-PHSep 27, 2025

PHASE: Physics-Integrated, Heterogeneity-Aware Surrogates for Scientific Simulations

arXiv:2509.23453v1h-index: 2
Originality Highly original
AI Analysis

This provides a practical, physically consistent acceleration for land-surface modeling and similar scientific workflows, addressing trustworthiness concerns in mission-critical settings.

The paper tackles the high computational cost of large-scale scientific simulations by introducing PHASE, a deep-learning framework that accelerates the biogeochemical spin-up workflow of a land model, reducing required integration length by at least 60x from over 1,200 years to 20 years.

Large-scale numerical simulations underpin modern scientific discovery but remain constrained by prohibitive computational costs. AI surrogates offer acceleration, yet adoption in mission-critical settings is limited by concerns over physical plausibility, trustworthiness, and the fusion of heterogeneous data. We introduce PHASE, a modular deep-learning framework for physics-integrated, heterogeneity-aware surrogates in scientific simulations. PHASE combines data-type-aware encoders for heterogeneous inputs with multi-level physics-based constraints that promote consistency from local dynamics to global system behavior. We validate PHASE on the biogeochemical (BGC) spin-up workflow of the U.S. Department of Energy's Energy Exascale Earth System Model (E3SM) Land Model (ELM), presenting-to our knowledge-the first scientifically validated AI-accelerated solution for this task. Using only the first 20 simulation years, PHASE infers a near-equilibrium state that otherwise requires more than 1,200 years of integration, yielding an effective reduction in required integration length by at least 60x. The framework is enabled by a pipeline for fusing heterogeneous scientific data and demonstrates strong generalization to higher spatial resolutions with minimal fine-tuning. These results indicate that PHASE captures governing physical regularities rather than surface correlations, enabling practical, physically consistent acceleration of land-surface modeling and other complex scientific workflows.

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