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Kriging/RBF-Hybrid Response Surface Methodology for Highly Nonlinear Functions

机译:高度非线性函数的Kriging / RBF混合响应面方法

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References(16) Cited-By(3) A hybrid method between the Kriging model and the radial basis function (RBF) networks is proposed for robust construction of a response surface of an unknown function. In the hybrid method, RBF approximates the macro trend of the function and the Kriging model estimates the micro trend. Hybrid methods using two types of model selection criteria (MSC), i.e., leave-one-out cross-validation and generalized cross-validation for RBF were applied to three one-dimensional test problems. The results were compared with those of the ordinary Kriging (OK) model and the universal Kriging model. The accuracy of each response surface was compared by function shape and root mean square error. The proposed hybrid models were more accurate than the OK model for highly nonlinear functions because they can capture the macro trend of the function properly by RBF, while the OK model cannot. In addition, the hybrid models can find the global optimum with few sample points using the Kriging model approximation errors.
机译:参考文献(16)(3)提出了一种在Kriging模型和径向基函数(RBF)网络之间的混合方法,用于健壮构造未知函数的响应面。在混合方法中,RBF近似函数的宏观趋势,而Kriging模型则估计微观趋势。使用三种类型的模型选择标准(MSC)的混合方法,即RBF的留一法交叉验证和广义交叉验证,被应用于三个一维测试问题。将结果与普通克里格(OK)模型和通用克里格模型进行比较。通过函数形状和均方根误差比较每个响应表面的准确性。对于高非线性函数,提出的混合模型比OK模型更准确,因为它们可以通过RBF正确捕获函数的宏观趋势,而OK模型则不能。此外,混合模型可以使用Kriging模型的近似误差找到少量采样点的全局最优值。

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