An Efficient Graph-Transformer Operator for Learning Physical Dynamics with Manifolds Embedding
Abstract
PhysGTO, a Graph-Transformer Operator, efficiently learns physical dynamics using manifold embeddings in both physical and latent spaces, enabling real-time simulations with reduced computational costs and enhanced flexibility.
Accurate and efficient physical simulations are essential in science and engineering, yet traditional numerical solvers face significant challenges in computational cost when handling simulations across dynamic scenarios involving complex geometries, varying boundary/initial conditions, and diverse physical parameters. While deep learning offers promising alternatives, existing methods often struggle with flexibility and generalization, particularly on unstructured meshes, which significantly limits their practical applicability. To address these challenges, we propose PhysGTO, an efficient Graph-Transformer Operator for learning physical dynamics through explicit manifold embeddings in both physical and latent spaces. In the physical space, the proposed Unified Graph Embedding module aligns node-level conditions and constructs sparse yet structure-preserving graph connectivity to process heterogeneous inputs. In the latent space, PhysGTO integrates a lightweight flux-oriented message-passing scheme with projection-inspired attention to capture local and global dependencies, facilitating multilevel interactions among complex physical correlations. This design ensures linear complexity relative to the number of mesh points, reducing both the number of trainable parameters and computational costs in terms of floating-point operations (FLOPs), and thereby allowing efficient inference in real-time applications. We introduce a comprehensive benchmark spanning eleven datasets, covering problems with unstructured meshes, transient flow dynamics, and large-scale 3D geometries. PhysGTO consistently achieves state-of-the-art accuracy while significantly reducing computational costs, demonstrating superior flexibility, scalability, and generalization in a wide range of simulation tasks.
Community
This paper proposes PhysGTO, a graph-transformer-based neural operator designed for efficient learning of physical dynamics on unstructured meshes. The method aims to address long-standing challenges in generalization, scalability, and computational efficiency that limit the applicability of existing learning-based solvers in realistic engineering scenarios.
Overall, the paper is technically solid and well-motivated, with a clear focus on practical physical simulation tasks. The combination of explicit physical-space graph construction and latent-space projection-inspired attention is conceptually appealing, and the extensive experimental benchmark strengthens the empirical claims. The work represents a meaningful step toward deployable neural operators for complex geometries and dynamic conditions.
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