Improved Kriging Interpolation Based on Support Vector Machine and Its Application in Oceanic Missing Data Recovery

Wang Hui-zan, Zhang Ren, Liu Kefeng, Liu Wei, Wang Guihua, Li Ning
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引用次数: 12

Abstract

In Kriging interpolation, the types of variogram model are very finite, which make the variogram very difficult to describe the spatial distributional characteristics of true data. In order to overcome its shortage, an improved interpolation called support vector machine-Kriging interpolation (SVM-Kriging) was proposed in this paper. The SVM-Kriging uses least square support vector machine (LS-SVM) to fit the variogram, which neednpsilat select the basic variogram model and can directly get the optimal variogram of real interpolated field by using SVM to fit the variogram curve automatically. Based on GODAS data, by using the proposed SVM-Kriging and the general Kriging based on other traditional variogram models, the interpolation test was carried out and the interpolated results were analyzed contrastively. The test show that the variogram of SVM-Kriging can avoid the subjectivity of selecting the type of variogram models and the SVM-Kriging is better than the general Kriging based on other variogram model as a whole. Therefore, the SVM-Kriging is a good and adaptive interpolation method.
基于支持向量机的改进Kriging插值及其在海洋失踪数据恢复中的应用
在Kriging插值中,变异函数模型的类型非常有限,这使得变异函数很难描述真实数据的空间分布特征。为了克服其不足,本文提出了一种改进的支持向量机-克里格插值(SVM-Kriging插值)。SVM- kriging采用最小二乘支持向量机(LS-SVM)拟合变异函数,无需选择基本的变异函数模型,利用SVM自动拟合变异函数曲线,可以直接得到实插值域的最优变异函数。在GODAS数据基础上,采用本文提出的SVM-Kriging和基于其他传统变异函数模型的通用Kriging进行插值检验,并对插值结果进行对比分析。检验表明,SVM-Kriging变异函数可以避免变异函数模型类型选择的主观性,总体上优于基于其他变异函数模型的一般Kriging。因此,SVM-Kriging是一种较好的自适应插值方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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