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Abaidi et al., 2024 - Google Patents

GAN-based generation of realistic compressible-flow samples from incomplete data

Abaidi et al., 2024

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Document ID
12106298125136300410
Author
Abaidi R
Adams N
Publication year
Publication venue
Computers & Fluids

External Links

Snippet

Predictive sampling of compressible flows is an important aspect of aerodynamic design, analysis, and optimization. The process is usually done by generating flow fields from computational fluid dynamics (CFD) simulations and solving governing evolution equations …
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