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Using Mahalanobis Distance to Detect and Remove Outliers in Experimental Covariograms

机译:使用Mahalanobis距离来检测和删除实验协变函数的异常值

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摘要

Experimental variograms are crucial for most geostatistical studies. In kriging, for example, the variography has a direct influence on the interpolation weights. Despite the great importance of variogram estimators in predicting geostatistical features, they are commonly influenced by outliers in the dataset. The effect of some randomly spatially distributed outliers can mask the pattern of the experimental variogram and produce a destructuration effect, implying that the true data spatial continuity cannot be reproduced. In this paper, an algorithm to detect and remove the effect of outliers in experimental variograms using the Mahalanobis distance is proposed. An example of the algorithm's application is presented, showing that the developed technique is able to satisfactorily detect and remove outliers from a variogram.
机译:实验变异函数对于大多数地质统计学研究至关重要。 例如,在Kriging中,滤片造影对插值重量的直接影响。 尽管变形仪估算器在预测地统计学功能方面非常重要,但它们通常受到数据集中异常值的影响。 一些随机空间分布的异常值的效果可以掩盖实验变速器的模式并产生破坏性效果,这意味着无法再现真正的数据空间连续性。 本文提出了一种用Mahalanobis距离检测和去除异常值在实验变速器中的效果的算法。 提出了算法应用程序的一个例子,表明开发的技术能够令人满意地检测和移除变形仪的异常值。

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