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A six-step practical approach to semivariogram modeling

机译:六步实用的半变异函数建模方法

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摘要

Geostatistical prediction and simulation are being increasingly used in the earth sciences and engineering to address the imperfect knowledge of attributes that fluctuate over large areas or volumes—pollutant concentration, electromagnetic fields, porosity, thickness of a geological formation. Central to the application of such techniques is the need to know the spatial continuity, knowledge that is commonly condensed in the form of covariance or semivariogram models. Their preparation is subdivided here into the following steps: (1) Data editing, (2) Exploratory data analysis, (3) Semivariogram estimation, (4) Directional investigation, (5) Simple modeling, (6) Nested modeling. I illustrate these stages practically with a real data set from a geophysical survey from Elk County, Kansas, USA. The applicability of the approach is not limited by the physical nature of the attribute of interest.
机译:地统计预测和模拟正在地球科学和工程中越来越多地用于解决对大面积或大范围内波动的属性(污染物浓度,电磁场,孔隙度,地质构造厚度)的不完善的认识。此类技术应用的核心是需要了解空间连续性,知识通常以协方差或半变异函数模型的形式浓缩。他们的准备工作分为以下几个步骤:(1)数据编辑,(2)探索性数据分析,(3)半变异函数估计,(4)方向研究,(5)简单建模,(6)嵌套建模。我实际上使用来自美国堪萨斯州埃尔克县的地球物理勘测的真实数据集说明了这些阶段。该方法的适用性不受所关注属性的物理性质的限制。

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