Title: Aircraft propeller design using deep learning models and genetic algorithms
Other Titles: 
Authors: Chertykovtseva V.
Hoang V. H.
Kurkin E.
Lukyanov О.
Quijada Pioquinto J. G.
Shevchenko N.
Keywords: 
aerodynamic coefficients
deep learning model
design
genetic algorithm
propeller
Issue Date: 2025
Publisher: Publisher
Citation: Aircraft propeller design using deep learning models and genetic algorithms / J. G. Quijada Pioquinto, О. Lukyanov, E. Kurkin, V. Chertykovtseva, V. H. Hoang, N. Shevchenko // Информационные технологии и нанотехнологии (ИТНТ-2025) : материалы XI междунар. конф. и молодеж. шк. (г. Самарканд, Узбекистан, 7-9 окт. 2025 г.) / М-во науки и высш. образования Рос. Федерации, Самар. нац. исслед. ун-т им. С. П. Королева (Самар. ун-т). - Самара : Изд-во Самар. ун-та, 2025. - С. 031552.
Abstract: The use of MLP-based surrogate aerodynamics modelsreduced the computational time by a factor of 50 whilemaintaining the computational accuracy. This advantage canbe further effectively used for solving optimization problemsbecause the high computational speed will allow theconsideration of a significantly larger number of combinationsof design variables and increase the design accuracy.
ISBN: 
ISSN: 
ISMN: 
Other Identifiers: RU\НТБ СГАУ\582285
Appears in Collections:Информационные технологии и нанотехнологии

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