4.7 Article

The application of support vector regression and virtual sample generation technique in the optimization design of transonic compressor

Journal

AEROSPACE SCIENCE AND TECHNOLOGY
Volume 130, Issue -, Pages -

Publisher

ELSEVIER FRANCE-EDITIONS SCIENTIFIQUES MEDICALES ELSEVIER
DOI: 10.1016/j.ast.2022.107814

Keywords

Transonic compressor; Optimization design; Virtual sample generation; Mega -trend diffusion; Support vector regression

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This study uses support vector regression as a surrogate model and adopts mega-trend diffusion technique to generate virtual samples to tackle the small sample size problem in turbomachinery optimization. The proposed method has been validated and shown to improve optimization results and relieve computational burden.
A B S T R A C T With the development of artificial intelligence, machine learning technique has been applied in turbomachinery optimization. However, the performance of a classic machine learning method largely depends on the quantity and quality of data samples. Due to the high cost of computational fluid dynamics models, a small sample size may restrict the reliability of machine learning models and optimization results. To tackle the small sample size problem in the turbomachinery optimization, this study uses support vector regression as a surrogate model. As a development of statistic learning theory, it performs well in the case of small samples. In order to expand the sample set, a mega-trend diffusion technique is adopted to generate virtual samples. The virtual samples generated from real samples can fill in the information gaps in the sparse domain. Then the support vector regression model is updated iteratively by virtual samples instead of real samples during optimization. In this way the calls of time-consuming numerical models are reduced and the optimization process is accelerated. The proposed method is validated by a high-dimensional aerodynamic optimization on the transonic compressor NASA Rotor 37. Firstly, a multi-objective optimization based on Free-form Deformation parameterization, support vector regression and NSGA-II algorithm is carried out. The optimized isentropic efficiency and total pressure ratio are increased by 1.7% and 12%, respectively. The choked mass flow rate is also raised. Then the virtual samples are generated using mega-trend diffusion and the surrogate model is updated. Finally, the optimization with virtual sample generation increases the efficiency by 2.3% compared to the baseline. Consequently, the proposed method can improve optimization results and relieve computational burden. (C) 2022 Published by Elsevier Masson SAS.

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