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タイトルReducing Wind Tunnel Data Requirements Using Neural Networks
本文(外部サイト)http://hdl.handle.net/2060/19970021749
著者(英)Norgaard, Magnus; Jorgenson, Charles C.; Ross, James C.
著者所属(英)NASA Ames Research Center
発行日1997-05-01
言語eng
内容記述The use of neural networks to minimize the amount of data required to completely define the aerodynamic performance of a wind tunnel model is examined. The accuracy requirements for commercial wind tunnel test data are very severe and are difficult to reproduce using neural networks. For the current work, multiple input, single output networks were trained using a Levenberg-Marquardt algorithm for each of the aerodynamic coefficients. When applied to the aerodynamics of a 55% scale model of a U.S. Air Force/ NASA generic fighter configuration, this scheme provided accurate models of the lift, drag, and pitching-moment coefficients. Using only 50% of the data acquired during, the wind tunnel test, the trained neural network had a predictive accuracy equal to or better than the accuracy of the experimental measurements.
NASA分類Aerodynamics
レポートNO97N22647
NASA-TM-112193
NAS 1.15:112193
A-976463
権利No Copyright


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