Benchmarking neural surrogates on realistic spatiotemporal multiphysics flows
Runze Mao, Rui Zhang, Xuan Bai, Tianhao Wu, Teng Zhang, Zhenyi Chen, Minqi Lin, Bocheng Zeng, Yangchen Xu, Yingxuan Xiang, Haoze Zhang, Shubham Goswami, Pierre A. Dawe, Yifan Xu, Zhenhua An, Mengtao Yan, Xiaoyi Lu, Yi Wang, Rongbo Bai, Haobu Gao, Xiaohang Fang, Han Li, Hao Sun

TL;DR
This paper introduces REALM, a comprehensive benchmarking framework for neural surrogates in complex multiphysics flows, revealing current limitations and guiding future development of physics-aware models.
Contribution
The paper presents a new benchmarking framework, REALM, with diverse datasets and evaluation protocols to rigorously assess neural surrogates in realistic multiphysics scenarios.
Findings
Scaling barriers due to dimensionality, stiffness, and mesh irregularity.
Model performance depends more on architecture than parameter count.
High correlation metrics do not guarantee physically accurate transient behavior.
Abstract
Predicting multiphysics dynamics is computationally expensive and challenging due to the severe coupling of multi-scale, heterogeneous physical processes. While neural surrogates promise a paradigm shift, the field currently suffers from an "illusion of mastery", as repeatedly emphasized in top-tier commentaries: existing evaluations overly rely on simplified, low-dimensional proxies, which fail to expose the models' inherent fragility in realistic regimes. To bridge this critical gap, we present REALM (REalistic AI Learning for Multiphysics), a rigorous benchmarking framework designed to test neural surrogates on challenging, application-driven reactive flows. REALM features 11 high-fidelity datasets spanning from canonical multiphysics problems to complex propulsion and fire safety scenarios, alongside a standardized end-to-end training and evaluation protocol that incorporates…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Adversarial Robustness in Machine Learning
