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Global design optimization for aerodynamics and rocket propulsion components
Institution:1. Department of Aerospace Engineering, Mechanics and Engineering Science, University of Florida, 231 Aerospace Building, Gainesville, FL 32611-2031, USA;2. NASA Marshall Space Flight Center, AL, USA;1. Avio S.p.A, Italy;2. Italian Space Agency (ASI), Italy;3. KBKhA, Russian Federation;1. Department of Aerospace Engineering, Korea Advanced Institute of Science and Technology, 291, Daehak-ro, Yuseong-gu, Daejeon, 34141, Republic of Korea;2. Satellite Technology Research Center, Korea Advanced Institute of Science and Technology, 291, Daehak-ro, Yuseong-gu, Daejeon, 34141, Republic of Korea;3. Naraspace Technology Co., Ltd., Haeyang-ro, Yeongdo-gu, Busan, 49111, Republic of Korea;4. Delft University of Technology (TU Delft), Kluyverweg 1, 2629 HS Delft, the Netherlands;5. Space Solutions Co., Ltd., 1321 Gwanpyeong-dong, Daejeon, 34015, Republic of Korea
Abstract:Modern computational and experimental tools for aerodynamics and propulsion applications have matured to a stage where they can provide substantial insight into engineering processes involving fluid flows, and can be fruitfully utilized to help improve the design of practical devices. In particular, rapid and continuous development in aerospace engineering demands that new design concepts be regularly proposed to meet goals for increased performance, robustness and safety while concurrently decreasing cost. To date, the majority of the effort in design optimization of fluid dynamics has relied on gradient-based search algorithms. Global optimization methods can utilize the information collected from various sources and by different tools. These methods offer multi-criterion optimization, handle the existence of multiple design points and trade-offs via insight into the entire design space, can easily perform tasks in parallel, and are often effective in filtering the noise intrinsic to numerical and experimental data. However, a successful application of the global optimization method needs to address issues related to data requirements with an increase in the number of design variables, and methods for predicting the model performance. In this article, we review recent progress made in establishing suitable global optimization techniques employing neural-network- and polynomial-based response surface methodologies. Issues addressed include techniques for construction of the response surface, design of experiment techniques for supplying information in an economical manner, optimization procedures and multi-level techniques, and assessment of relative performance between polynomials and neural networks. Examples drawn from wing aerodynamics, turbulent diffuser flows, gas–gas injectors, and supersonic turbines are employed to help demonstrate the issues involved in an engineering design context. Both the usefulness of the existing knowledge to aid current design practices and the need for future research are identified.
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