Fusion-DeepONet: A Data-Efficient Neural Operator for Geometry-Dependent Hypersonic and Supersonic Flows
Ahmad Peyvan, Varun Kumar, George Em Karniadakis

TL;DR
Fusion-DeepONet is a data-efficient neural operator that accurately predicts geometry-dependent hypersonic and supersonic flows, outperforming existing models on irregular grids with fewer parameters, thus accelerating aerospace design processes.
Contribution
The paper introduces Fusion-DeepONet, a novel neural operator that improves accuracy and efficiency in modeling complex flow fields around aerospace geometries, especially on irregular grids.
Findings
Fusion-DeepONet matches U-Net accuracy on uniform grids.
It outperforms MeshGraphNet and Vanilla-DeepONet on irregular grids.
Requires fewer trainable parameters than comparable models.
Abstract
Shape optimization is essential in aerospace vehicle design, including reentry systems, and propulsion system components, as it directly influences aerodynamic efficiency, structural integrity, and overall mission success. Rapid and accurate prediction of external and internal flows accelerates design iterations. To this end, we develop a new variant of DeepONet, called Fusion-DeepONet as a fast surrogate model for geometry-dependent hypersonic and supersonic flow fields. We evaluated Fusion-DeepONet in learning two external hypersonic flows and a supersonic shape-dependent internal flow problem. First, we compare the performance of Fusion-DeepONet with state-of-the-art neural operators to learn inviscid hypersonic flow around semi-elliptic blunt bodies for two grid types: uniform Cartesian and irregular grids. Fusion-DeepONet provides comparable accuracy to parameter-conditioned U-Net…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Plasma and Flow Control in Aerodynamics · Computational Fluid Dynamics and Aerodynamics
MethodsSparse Evolutionary Training · Max Pooling · Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · U-Net · MeshGraphNet
