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Airfoil Shape Optimization based on Surrogate Model

机译:基于代理模型的翼型形状优化

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Abstract Engineering design problems always require enormous amount of real-time experiments and computational simulations in order to assess and ensure the design objectives of the problems subject to various constraints. In most of the cases, the computational resources and time required per simulation are large. In certain cases like sensitivity analysis, design optimisation etc where thousands and millions of simulations have to be carried out, it leads to have a life time of difficulty for designers. Nowadays approximation models, otherwise called as surrogate models (SM), are more widely employed in order to reduce the requirement of computational resources and time in analysing various engineering systems. Various approaches such as Kriging, neural networks, polynomials, Gaussian processes etc are used to construct the approximation models. The primary intention of this work is to employ the k-fold cross validation approach to study and evaluate the influence of various theoretical variogram models on the accuracy of the surrogate model construction. Ordinary Kriging and design of experiments (DOE)?approaches are used to construct the SMs by approximating panel and viscous solution algorithms which are primarily used to solve the flow around airfoils and aircraft wings. The method of coupling the SMs with a suitable optimisation scheme to carryout an aerodynamic design optimisation process for airfoil shapes is also discussed.
机译:摘要工程设计问题总是需要大量的实时实验和计算模拟,以便评估和确保问题受到各种限制的设计目标。在大多数情况下,每个模拟所需的计算资源和时间很大。在某些情况下,如敏感性分析,设计优化等必须进行数千和数百万次模拟,它导致设计师的难度难度。如今,诸如称为代理模型(SM)的近似模型,以减少计算资源和分析各种工程系统的时间的要求。诸如Kriging,神经网络,多项式,高斯过程等的各种方法用于构建近似模型。这项工作的主要目的是采用K折叠交叉验证方法来研究和评估各种理论变形模型对替代模型建设的准确性的影响。普通的Kriging和实验设计(DOE)?方法用于通过近似面板和粘性解决方案算法来构造SMS,主要用于解决翼型和飞机翼周围的流动。还讨论了用合适的优化方案耦合SMS以进行用于翼型形状的空气动力学设计优化过程的方法。

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