4.7 Article

On deep-learning-based geometric filtering in aerodynamic shape optimization

Journal

AEROSPACE SCIENCE AND TECHNOLOGY
Volume 112, Issue -, Pages -

Publisher

ELSEVIER FRANCE-EDITIONS SCIENTIFIQUES MEDICALES ELSEVIER
DOI: 10.1016/j.ast.2021.106603

Keywords

Aerodynamic shape optimization; Deep learning; Geometric filtering

Funding

  1. Ministry of EducationSingapore [R265000661112]

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Geometric filtering based on deep-learning models has been shown to effectively improve the efficiency of aerodynamic shape optimization without excluding innovative aerodynamic shapes. Specific cases validate the application of geometric filtering in aerodynamic shape optimization and showcase its advantages in different scenarios.
Geometric filtering based on deep-learning models has been shown to be effective to shrink the design space and improve the efficiency of aerodynamic shape optimization. However, since the deep-learning models are trained by existing airfoils, it is criticized that geometric filtering would prevent optimization from finding innovative aerodynamic shapes. This work is conducted to address the concern. By performing 216 airfoil design optimization and several wing design optimization of a conventional wing-body-tail configuration and a blended-wing-body configuration, we find that using the geometric filtering with a lower bound of similar to 0.7 does not exclude innovative aerodynamic shapes that maximize cruise efficiency. The results strengthen the confidence of applying deep-learning-based geometric filtering in aerodynamic shape optimization. Then, two applications of geometric filtering in aerodynamic shape optimization are showcased: the geometric validity constraint and global modal shape derivation. The former is shown to enable aerodynamic shape optimization in a large design space, and the latter provides an efficient parameterization approach to aerodynamic modeling of three-dimensional aircraft configurations. (C) 2021 Elsevier Masson SAS. All rights reserved.

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