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Improving variable-fidelity modelling by exploring global design space and radial basis function networks for aerofoil design

机译:通过探索用于机翼设计的全局设计空间和径向基函数网络来改进可变逼真度建模

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The global variable-fidelity modelling (GVFM) method presented in this article extends the original variable-complexity modelling (VCM) algorithm that uses a low-fidelity and scaling function to approximate a high-fidelity function for efficiently solving design-optimization problems. GVFM uses the design of experiments to sample values of high- and low-fidelity functions to explore global design space and to initialize a scaling function using the radial basis function (RBF) network. This approach makes it possible to remove high-fidelity-gradient evaluation from the process, which makes GVFM more efficient than VCM for high-dimensional design problems. The proposed algorithm converges with 65% fewer high-fidelity function calls for a one-dimensional problem than VCM and approximately 80% fewer for a two-dimensional numerical problem. The GVFM method is applied for the design optimization of transonic and subsonic aerofoils. Both aerofoil design problems show design improvement with a reasonable number of high- and low-fidelity function evaluations.
机译:本文介绍的全局变量保真度建模(GVFM)方法扩展了原始的变量复杂度建模(VCM)算法,该算法使用低保真度和缩放函数来逼近高保真度函数,以有效解决设计优化问题。 GVFM使用实验设计来采样高保真度和低保真度函数的值,以探索全局设计空间并使用径向基函数(RBF)网络初始化缩放函数。这种方法可以从过程中删除高保真度梯度评估,这使得GVFM在解决高维设计问题时比VCM更有效。所提出的算法收敛,与一维问题相比,一维问题的高保真函数调用减少了65%,而对二维数值问题的高保真函数调用则减少了约80%。 GVFM方法用于跨音速和亚音速翼型的设计优化。翼型设计的两个问题都表明,通过合理数量的高保真度和低保真度功能评估,可以改善设计。

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