High-fidelity quantification of manufacturing-induced uncertainty in supersonic flow fields via deep autoencoder and spatially-adaptive polynomial chaos
Key evidence shows that deep autoencoder techniques enhance the understanding of flow variability characterized by polynomial chaos.
Assessment employs advanced deep autoencoder and spatially-adaptive polynomial chaos methods to analyze complex flow fields.
This analysis supports improved modeling practices, potentially leading to better design processes in aerospace engineering.
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High-fidelity quantification of manufacturing-induced uncertainty in supersonic flow fields via deep autoencoder and spatially-adaptive polynomial chaos | Synapse