Parameter determining method of Gaussian radial basis function agent model

A technology of Gaussian radial basis and surrogate model, which is applied in the field of parameter determination of Gaussian radial basis function surrogate model, and can solve the problems of unreliable approximation accuracy, small amount of calculation, and large amount of calculation.

Inactive Publication Date: 2017-01-04
NAT UNIV OF DEFENSE TECH
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Problems solved by technology

The former type of method has a small amount of calculation, and the approximate model obtained by uniformly distributed samples can achieve high accuracy, but when the sample distribution is

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  • Parameter determining method of Gaussian radial basis function agent model
  • Parameter determining method of Gaussian radial basis function agent model
  • Parameter determining method of Gaussian radial basis function agent model

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Embodiment Construction

[0049] The process flow of the parameter determination method of the Gaussian radial basis function proxy model proposed by the present invention is as follows figure 2 shown. The specific implementation manner of the present invention will be further described below in conjunction with the accompanying drawings.

[0050] Step 1: Linearly map the sample space into an n-dimensional unit cube:

[0051] According to formula (3), the sample space is linearly mapped into the n-dimensional unit cube.

[0052] Step 2: Calculate the local density of each sample point according to the sample distribution:

[0053] Calculate the local density ρ(x i ).

[0054] Step 3: Calculate the sample point x with the minimum local density s The minimum distance d to other sample points s,min :

[0055] Calculate d using the following formula s,min :

[0056] d s , min = min j =...

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Abstract

The invention belongs to the field of information processing, and particularly relates to a parameter determining method of a Gaussian radial basis function agent model. According to the technical scheme, the parameter determining method includes the steps that sample space is linearly mapped into a unit cube; the local densities of sample points are calculated according to sample distribution conditions; the minimum distance between the sample point with the minimum local density and other sample points is calculated; the kernel widths of the sample points are determined; the weight coefficients of basis functions corresponding to the sample points are determined. The parameter determining method has the advantages that the method is clear in logic, easy and convenient to operate and easy to execute; the calculated amount is hardly increased with the basis-function kernel width determining method; the Gaussian radial basis function agent model obtained with the method can be commonly used for even/uneven samples, and the parameter determining method is reliable, efficient and high in accuracy.

Description

technical field [0001] The invention belongs to the field of information processing, and in particular relates to a method for determining parameters of a Gaussian radial basis function proxy model. Background technique [0002] The proxy model method is often involved in engineering analysis, design, and optimization processes. Its basic idea is to replace the original complex calculation analysis model with a relatively simple analytical function, and use the response information of known discrete data points (samples) to predict Unknown point response value. The radial basis function surrogate model is relatively reliable in terms of accuracy and robustness, and it is a surrogate model widely used in various engineering fields. The Gaussian function has good continuity and derivability, and is widely used as the kernel function of the radial basis function, and its expression is: [0003] [0004] In the formula, the kernel width of the σ Gaussian kernel function. ...

Claims

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Application Information

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IPC IPC(8): G06F17/50
CPCG06F30/17G06F30/20G06F2111/04
Inventor 胡凡彭科江振宇张为华张士峰王东辉向敏
Owner NAT UNIV OF DEFENSE TECH
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