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Detecting and quantifying sources of non-stationarity via experimental semivariogram modeling

机译:通过实验半变异函数建模检测和量化非平稳性源

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摘要

Conventional geostatistics often relies on the assumption of second order stationarity of the random function (RF). Generally, local means and local variances of the random variables (RVs) are assumed to be constant throughout the domain. Large scale differences in the local means and local variances of the RVs are referred to as trends. Two problems of building geostatistical models in presence of mean trends are: (1) inflation of the conditional variances and (2) the spatial continuity is exaggerated. Variance trends on the other hand cause conditional variances to be over-estimated in certain regions of the domain and under-estimated in other areas. In both cases the uncertainty characterized by the geostatistical model is improperly assessed. This paper proposes a new approach to identify the presence and contribution of mean and variance trends in the domain via calculation of the experimental semivariogram. The traditional experimental semivariogram expression is decomposed into three components: (1) the mean trend, (2) the variance trend and (3) the stationary component. Under stationary conditions, both the mean and the variance trend components should be close to zero. This proposed approach is intended to be used in the early stages of data analysis when domains are being defined or to verify the impact of detrending techniques in the conditioning dataset for validating domains. This approach determines the source of a trend, thereby facilitating the choice of a suitable detrending method for effective resource modeling.
机译:传统的地统计学通常依赖于随机函数(RF)的二阶平稳性的假设。通常,随机变量(RVs)的局部均值和局部方差假定在整个域中都是恒定的。 RV的局部均值和局部方差的大规模差异称为趋势。在存在平均趋势的情况下建立地统计学模型的两个问题是:(1)条件方差的膨胀和(2)夸大了空间连续性。另一方面,方差趋势导致条件方差在域的某些区域中被高估,而在其他区域中被低估。在这两种情况下,均未正确评估以地统计学模型为特征的不确定性。本文提出了一种通过计算实验半变异函数来确定域中均值和方差趋势的存在和贡献的新方法。传统的实验半变异函数表达式可分解为三个分量:(1)平均趋势,(2)方差趋势和(3)平稳分量。在平稳条件下,均值和方差趋势分量都应接近零。此提议的方法旨在在定义域时用于数据分析的早期阶段,或验证去趋势数据在条件数据集中验证域的影响。这种方法确定了趋势的来源,从而有助于为有效的资源建模选择合适的去趋势方法。

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  • 作者单位

    Department of Civil & Environmental Engineering, Centre of Computational Geostatistics, University of Alberta, 3-133 Markin/CNRL NREF, Edmonton, AB T6G 2W2, Canada;

    SRK Consulting (Canada) Inc., 2100, 25 Adelaide St. East, Toronto, ON M5C 3A1, Canada;

    Department of Mining Engineering, University of Chile, Avenida Tupper 2069, 8370451 Santiago, Chile ALGES Laboratory, Advanced Mining Technology Center (AMTC), University of Chile, Avenida Tupper 2069, 8370451 Santiago, Chile;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    semivariogram; non-stationarity; mean trend; variance trend;

    机译:半变异函数非平稳性;平均趋势方差趋势;

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