Neural Network Prediction of New Aircraft Design Coefficients

Neural Network Prediction of New Aircraft Design Coefficients

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Publisher's Synopsis

This paper discusses a neural network tool for more effective aircraft design evaluations during wind tunnel tests. Using a hybrid neural network optimization method, we have produced fast and reliable predictions of aerodynamical coefficients, found optimal flap settings, and flap schedules. For validation, the tool was tested on a 55% scale model of the USAF/NASA Subsonic High Alpha Research Concept aircraft (SHARC). Four different networks were trained to predict coefficients of lift, drag, moment of inertia, and lift drag ratio (C(sub L), C(sub D), C(sub M), and L/D) from angle of attack and flap settings. The latter network was then used to determine an overall optimal flap setting and for finding optimal flap schedules. Norgaard, Magnus and Jorgensen, Charles C. and Ross, James C. Ames Research Center NASA-TM-112197, A-976719, NAS 1.15:112197 RTOP 519-30-12...

Book information

ISBN: 9781792937910
Publisher: Amazon Digital Services LLC - KDP Print US
Imprint: Independently Published
Pub date:
Language: English
Number of pages: 36
Weight: 109g
Height: 279mm
Width: 216mm
Spine width: 2mm