Airfoil Shape Optimisation Using a Multi-Fidelity Surrogate-Assisted Metaheuristic with a New Multi-Objective Infill Sampling Technique

This work presents multi-fidelity multi-objective infill-sampling surrogate-assisted optimization for airfoil shape optimization. The optimization problem is posed to maximize the lift and drag coefficient ratio subject to airfoil geometry constraints. Computational Fluid Dynamic (CFD) and XFoil too...

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Bibliographic Details
Published inComputer modeling in engineering & sciences Vol. 137; no. 3; pp. 2111 - 2128
Main Authors Mar Aye, Cho, Wansaseub, Kittinan, Kumar, Sumit, G. Tejani, Ghanshyam, Bureerat, Sujin, R. Yildiz, Ali, Pholdee, Nantiwat
Format Journal Article
LanguageEnglish
Published Henderson Tech Science Press 2023
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Summary:This work presents multi-fidelity multi-objective infill-sampling surrogate-assisted optimization for airfoil shape optimization. The optimization problem is posed to maximize the lift and drag coefficient ratio subject to airfoil geometry constraints. Computational Fluid Dynamic (CFD) and XFoil tools are used for high and low-fidelity simulations of the airfoil to find the real objective function value. A special multi-objective sub-optimization problem is proposed for multiple points infill sampling exploration to improve the surrogate model constructed. To validate and further assess the proposed methods, a conventional surrogate-assisted optimization method and an infill sampling surrogate-assisted optimization criterion are applied with multi-fidelity simulation, while their numerical performance is investigated. The results obtained show that the proposed technique is the best performer for the demonstrated airfoil shape optimization. According to this study, applying multi-fidelity with multi-objective infill sampling criteria for surrogate-assisted optimization is a powerful design tool.
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ISSN:1526-1506
1526-1492
1526-1506
DOI:10.32604/cmes.2023.028632