Gradient-Enhanced Stochastic Optimization of High-Fidelity Simulations
Optimization and control of complex unsteady flows remains an important challenge due to the large cost of performing a function evaluation, i.e. a full computational fluid dynamics (CFD) simulation. Reducing the number of required function evaluations would help to decrease the computational cost of the overall optimization procedure. In this article, we consider the stochastic derivative-free surrogate-model based Dynamic COordinate search using Response Surfaces (DYCORS) algorithm [1] and propose several en- hancements. First, the internal parameters of the radial basis function employed to generate the surrogate model are optimized and second, the gradient information is added to the surrogate model to improve its accuracy and enhance the convergence rate of the algorithm. We apply the resulting optimization algorithm to the minimization of the total pressure loss through a linear cascade of blades, and we compare the results obtained with the stochastic algorithms at different Reynolds numbers with a gradient-based optimization algorithm. We demonstrate that stochastic optimization outperforms gradient-based optimization even at very low Re numbers, and that the proposed gradient-enhanced version improves the convergence rate of the original algorithm. An implementation of the gradient-enhanced version of the algorithm is available in [2]
Year of publication: |
[2022]
|
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Authors: | Quirós Rodríguez, Alejandro ; Fosas de Pando, Miguel ; Sayadi, Taraneh |
Publisher: |
[S.l.] : SSRN |
Subject: | Simulation | Stochastischer Prozess | Stochastic process | Theorie | Theory | Mathematische Optimierung | Mathematical programming | Operations Research | Operations research |
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