Learning 3D Hypersonic Flow with Physics-Enhanced Neural Fields: A Case Study on the Orion Reentry Capsule
Haitz S\'aez de Oc\'ariz Borde, Pietro Innocenzi, Flavio Savarino, Andrei Cristian Popescu, Pantelis Papageorgiou

TL;DR
This paper introduces a physics-enhanced neural field model for 3D hypersonic flow simulation around the Orion reentry capsule, enabling efficient and accurate predictions of aerothermodynamic properties.
Contribution
The authors develop a novel neural field approach with physics constraints and Fourier features for 3D hypersonic flow prediction, outperforming existing surrogate models.
Findings
Superior accuracy in capturing steep gradients compared to graph neural networks
Supports rapid exploration of operating conditions with continuous predictions
Provides a general framework for data-driven hypersonic aerothermodynamics
Abstract
We develop a 3D aerothermodynamic simulator for the Orion reentry capsule at hypersonic speeds, a timely case study given its role in upcoming lunar missions. The large computational meshes required for these scenarios make traditional computational fluid dynamics impractical for full-mission performance prediction and control. In this work, we propose physics-enhanced 3D neural fields for predicting steady hypersonic flow around aerodynamic bodies. The model maps spatial coordinates and angle of attack to pressure, temperature, and velocity components. We enhance the base model with Fourier positional feature mappings, which allow it to capture the sharp discontinuities typical of hypersonic flows, and further constrain the solution by imposing no-slip and isothermal wall conditions. We compare our proposed approach to other surrogate alternatives, such as graph neural networks, and…
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