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Inverse Design of Two-Dimensional Airfoils Using Conditional Generative Models and Surrogate Log-Likelihoods

Qiuyi Chen, Jun Wang, Phillip E. Pope, Wei Chen, Mark Fuge

2021Journal of Mechanical Design33 citationsDOI

Abstract

Abstract This paper shows how to use conditional generative models in two-dimensional (2D) airfoil optimization to probabilistically predict good initialization points within the vicinity of the optima given the input boundary conditions, thus warm starting and accelerating further optimization. We accommodate the possibility of multiple optimal designs corresponding to the same input boundary condition and take this inversion ambiguity into account when designing our prediction framework. To this end, we first employ the conditional formulation of our previous work BézierGAN–Conditional BézierGAN (CBGAN)—as a baseline, then introduce its sibling conditional entropic BézierGAN (CEBGAN), which is based on optimal transport regularized with entropy. Compared with CBGAN, CEBGAN overcomes mode collapse plaguing conventional GANs, improves the average lift-drag (Cl/Cd) efficiency of airfoil predictions from 80.8% of the optimal value to 95.8%, and meanwhile accelerates the training process by 30.7%. Furthermore, we investigate the unique ability of CEBGAN to produce a log-likelihood lower bound that may help select generated samples of higher performance (e.g., aerodynamic performance). In addition, we provide insights into the performance differences between these two models with low-dimensional toy problems and visualizations. These results and the probabilistic formulation of this inverse problem justify the extension of our GAN-based inverse design paradigm to other inverse design problems or broader inverse problems.

Topics & Concepts

AirfoilInverseInitializationMathematical optimizationComputer scienceMathematicsInverse problemLift (data mining)Conditional entropyConditional probabilityProbabilistic logicAerodynamicsApplied mathematicsAlgorithmPrinciple of maximum entropyStatisticsArtificial intelligenceMachine learningEngineeringMathematical analysisGeometryProgramming languageAerospace engineeringStructural engineeringAdvanced Multi-Objective Optimization AlgorithmsModel Reduction and Neural NetworksGenerative Adversarial Networks and Image Synthesis
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