The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process

Geostatistics was created during the second half of 20th century by Georges Matheron, on the basis of Danie Krige’s and Herbert Sichel’s theories. The purpose of this new science was to achieve an optimal evaluation of mining ore bodies. The interest in geostatistical tools has grown, and nowadays i...

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Main Authors: Alessandro Mazzella, Antonio Mazzella
Format: Article
Language:English
Published: Hindawi Limited 2013-01-01
Series:Journal of Engineering
Online Access:http://dx.doi.org/10.1155/2013/960105
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spelling doaj-dc1283a70e07401ba00e37bf6dc6ef972020-11-24T21:39:17ZengHindawi LimitedJournal of Engineering2314-49042314-49122013-01-01201310.1155/2013/960105960105The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation ProcessAlessandro Mazzella0Antonio Mazzella1Department of Social Science, University of Cagliari, 09123 Sardinia, ItalyDepartment of Civil and Environmental Engineering and Architecture, University of Cagliari, 09123 Sardinia, ItalyGeostatistics was created during the second half of 20th century by Georges Matheron, on the basis of Danie Krige’s and Herbert Sichel’s theories. The purpose of this new science was to achieve an optimal evaluation of mining ore bodies. The interest in geostatistical tools has grown, and nowadays its techniques are applied in many branches of engineering where data analysis, interpolation, and evaluation are necessary. This paper presents an overview of the geostatistics approach in data analysis and describes each operative step from experimental semivariogram calculation to kriging interpolation, focusing and underlining the experimental semivariogram modeling step. To help any data analysts during geostatistical analysis process, an innovative geostatistical software was created. This new software, named “Kriging Assistant” (KA) and developed within the Department of Geoengineering and Environmental Technologies University of Cagliari, is able, with a marginal support of the user, to produce 2D and 3D grids and contour maps of sampled data. A comparison between kriging results obtained by KA and two of the most common data analysis softwares (Golden Software Surfer and ESRI Geostatistical Analyst for ArcMap) is presented in this paper. Reported data showed that KA minimizes interpolation errors and, for this reason, provides better interpolation results.http://dx.doi.org/10.1155/2013/960105
collection DOAJ
language English
format Article
sources DOAJ
author Alessandro Mazzella
Antonio Mazzella
spellingShingle Alessandro Mazzella
Antonio Mazzella
The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
Journal of Engineering
author_facet Alessandro Mazzella
Antonio Mazzella
author_sort Alessandro Mazzella
title The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
title_short The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
title_full The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
title_fullStr The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
title_full_unstemmed The Importance of the Model Choice for Experimental Semivariogram Modeling and Its Consequence in Evaluation Process
title_sort importance of the model choice for experimental semivariogram modeling and its consequence in evaluation process
publisher Hindawi Limited
series Journal of Engineering
issn 2314-4904
2314-4912
publishDate 2013-01-01
description Geostatistics was created during the second half of 20th century by Georges Matheron, on the basis of Danie Krige’s and Herbert Sichel’s theories. The purpose of this new science was to achieve an optimal evaluation of mining ore bodies. The interest in geostatistical tools has grown, and nowadays its techniques are applied in many branches of engineering where data analysis, interpolation, and evaluation are necessary. This paper presents an overview of the geostatistics approach in data analysis and describes each operative step from experimental semivariogram calculation to kriging interpolation, focusing and underlining the experimental semivariogram modeling step. To help any data analysts during geostatistical analysis process, an innovative geostatistical software was created. This new software, named “Kriging Assistant” (KA) and developed within the Department of Geoengineering and Environmental Technologies University of Cagliari, is able, with a marginal support of the user, to produce 2D and 3D grids and contour maps of sampled data. A comparison between kriging results obtained by KA and two of the most common data analysis softwares (Golden Software Surfer and ESRI Geostatistical Analyst for ArcMap) is presented in this paper. Reported data showed that KA minimizes interpolation errors and, for this reason, provides better interpolation results.
url http://dx.doi.org/10.1155/2013/960105
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