TL;DR
This paper introduces a unified framework for physics-informed machine learning surrogates that incorporates spatial and temporal awareness, improving accuracy and stability in CFD simulations.
Contribution
It proposes three innovations—Multi Node Prediction, Temporal Correction, and Geometric Inductive Biases—to enhance GNNs and Transformers for physics simulation tasks.
Findings
Improved accuracy and stability in long-horizon CFD rollouts.
Enhanced generalization to unseen physics subtasks.
Consistent performance gains across multiple architectures.
Abstract
Machine Learning surrogates for Computational Fluid Dynamics (CFD), particularly Graph Neural Networks (GNNs) and Transformers, have become a new important approach for accelerating physics simulations. However, we identify a critical bottleneck in the field: while architectures have advanced significantly, the common underlying training paradigms remain bound to naive assumptions, such as node-wise supervision and explicit Euler time-stepping. These legacy choices ignore the stiff dynamics and local flux continuity inherent to numerous partial differential equations resolution methods, such as Finite Element, Difference, or Volume (FEM). In this work, we propose a unified framework to bridge the gap between geometric deep learning and rigorous numerical analysis. We introduce three key innovations: (1) Multi Node Prediction, a stencil-level objective that predicts field values for a…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Code & Models
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
