Generative method for aerodynamic optimization based on classifier-free guided denoising diffusion probabilistic model
Journal:
arXiv
Published Date:
Mar 10, 2025
Abstract
Inverse design approach, which directly generates optimal aerodynamic shape
with neural network models to meet designated performance targets, has drawn
enormous attention. However, the current state-of-the-art inverse design
approach for airfoils, which is based on generative adversarial network,
demonstrates insufficient precision in its generating and training processes
and struggles to reveal the coupling relationship among specified performance
indicators. To address these issues, the airfoil inverse design framework based
on the classifier-free guided denoising diffusion probabilistic model (CDDPM)
is proposed innovatively in this paper. First, the CDDPM can effectively
capture the correlations among specific performance indicators and, by
adjusting the classifier-free guide coefficient, generate corresponding upper
and lower surface pressure coefficient distributions based on designated
pressure features. These distributions are then accurately translated into
airfoil geometries through a mapping model. Experimental results using
classical transonic airfoils as examples show that the inverse design based on
CDDPM can generate a variety of pressure coefficient distributions, which
enriches the diversity of design results. Compared with current
state-of-the-art Wasserstein generative adversarial network methods, CDDPM
achieves a 33.6% precision improvement in airfoil generating tasks. Moreover, a
practical method to readjust each performance indicator value is proposed based
on global optimization algorithm in conjunction with active learning strategy,
aiming to provide rational value combination of performance indicators for the
inverse design framework. This work is not only suitable for the airfoils
design, but also has the capability to apply to optimization process of general
product parts targeting selected performance indicators.