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Conditional co-simulation of continuous and categorical variables for geostatistical applications

机译:地统计学应用中连续和分类变量的条件协同仿真

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摘要

The modeling of uncertainty in continuous and categorical regionalized variables is a common issue in the geosciences. We present a hybrid continuous/categorical model, in which the continuous variable is represented by the transform of a Gaussian random field, while the categorical variable is obtained by truncating one or more Gaussian random fields. The dependencies between the continuous and categorical variables are reproduced by assuming that all the Gaussian random fields are spatially cross-correlated. Algorithms and computer programs are proposed to infer the model parameters and to co-simulate the variables, and illustrated through a case study on a mining data set.
机译:连续和分类区域变量不确定性的建模是地球科学中的常见问题。我们提出了一种混合连续/分类模型,其中连续变量由高斯随机场的变换表示,而分类变量是通过截断一个或多个高斯随机场而获得的。通过假设所有高斯随机场在空间上互相关,可以再现连续变量和分类变量之间的依赖性。提出了算法和计算机程序来推断模型参数并共同模拟变量,并通过对挖掘数据集的案例研究进行了说明。

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