Abstract
The Ordinary Kriging method is a common spatial interpolation algorithm in geostatistics. Because the semivariogram required for kriging interpolation greatly influences this process, optimal fitting of the semivariogram is of major significance for improving the theoretical accuracy of spatial interpolation. A deep neural network is a machine learning algorithm that can, in principle, be applied to any function, including a semivariogram. Accordingly, a novel spatial interpolation method based on a deep neural network and Ordinary Kriging was proposed in this research, and elevation data were used as a case study. Compared with the semivariogram fitted by the traditional exponential model, spherical model, and Gaussian model, the kriging variance in the proposed method is smaller, which means that the interpolation results are closer to the theoretical results of Ordinary Kriging interpolation. At the same time, this research can simplify processes for a variety of semivariogram analyses.
Funder
The National Science and Technology Major Projects of China
Publisher
Public Library of Science (PLoS)
Reference27 articles.
1. The Origins of Kriging;N Cressie;Mathematical Geology,1990
2. Comparison of Four Spatial Interpolation Methods for Estimating Soil Moisture in a Complex Terrain Catchment;X Yao;PLoS ONE,2013
3. Spatial Interpolation of Meteorologic Variables in Vietnam using the Kriging Method;XT Nguyen;Computers&Geosciences,2015
4. Principles of geostatistics;G Matheron;Economic Geology,1963
5. The intrinsic random functions, and their applications;G Matheron;Advances in Applied Probability,1973
Cited by
8 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献