2019
DOI: 10.48550/arxiv.1912.04706
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Improved Surrogate Modeling using Machine Learning for Industrial Civil Aircraft Aerodynamics

Romain Dupuis,
Jean-Christophe Jouhaud,
Pierre Sagaut

Abstract: Predicting and simulating aerodynamic fields for civil aircraft over wide flight envelopes represent a real challenge mainly due to significant numerical costs and complex flows. Surrogate models and reduced-order models help to estimate aerodynamic fields from a few well-selected simulations. However, their accuracy dramatically decreases when different physical regimes are involved. Therefore, a method of local non-intrusive reduced-order models using machine learning, called Local Decomposition Method, has … Show more

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