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Estimation of CAD model simplification impact on CFD analysis using machine learning techniques

Communication avec acte
Author
FINE, Lionel
107995 EADS Innovation Works [Suresnes] [EADS IW]
ccPERNOT, Jean-Philippe
178374 Laboratoire des Sciences de l'Information et des Systèmes : Ingénierie Numérique des Systèmes Mécaniques [LSIS- INSM]
ccDANGLADE, Florence
ccVERON, Philippe

URI
http://hdl.handle.net/10985/11407
Date
2015

Abstract

This paper adresses the way machine learning techniques based on neural networks can be used to predict the impact of simplification processes on CAD model for heat transfer FEA purposes.

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