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Scalable statistics of correlated random variables and extremes applied to deep borehole porosities

机译:相关随机变量和极端的可扩展统计应用于深层钻孔孔隙症

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摘要

We analyze scale-dependent statistics of correlated random hydrogeological variables and their extremes using neutron porosity data from six deep boreholes, in three diverse depositional environments, as example. We show that key statistics of porosity increments behave and scale in manners typical of many earth and environmental (as well as other) variables. These scaling behaviors include a tendency of increments to have symmetric, non-Gaussian frequency distributions characterized by heavy tails that decay with separation distance or lag; power-law scaling of sample structure functions (statistical moments of absolute increments) in midranges of lags; linear relationships between log structure functions of successive orders at all lags, known as extended self-similarity or ESS; and nonlinear scaling of structure function power-law exponents with function order, a phenomenon commonly attributed in the literature to multifractals. Elsewhere we proposed, explored and demonstrated a new method of geostatistical inference that captures all of these phenomena within a unified theoretical framework. The framework views data as samples from random fields constituting scale mixtures of truncated (monofractal) fractional Brownian motion (tfBm) or fractional Gaussian noise (tfGn). Important questions not addressed in previous studies concern the distribution and statistical scaling of extreme incremental values. Of special interest in hydrology (and many other areas) are statistics of absolute increments exceeding given thresholds, known as peaks over threshold or POTs. In this paper we explore the statistical scaling of data and, for the first time, corresponding POTs associated with samples from scale mixtures of tfBm or tfGn. We demonstrate that porosity data we analyze possess properties of such samples and thus follow the theory we proposed. The porosity data are of additional value in revealing a remarkable cross-over from one scaling regime to another at certain lags. The phenomena we uncover are of key importance for the analysis of fluid flow and solute as well as particulate transport in complex hydrogeologic environments.
机译:在三种不同的沉积环境中,我们将相关随机水管地质变量及其极端的尺度依赖于相关随机水文地质变量及其使用中子孔隙率数据的统计数据。我们表明孔隙度增量的关键统计数据以许多地球和环境(以及其他)变量的典型方式行为和规模。这些缩放行为包括具有对称,非高斯频率分布的增量的趋势,其特征在于具有分离距离或滞后的重尾部的重型尾部;滞后中的样本结构功能(绝对增量统计时刻)的权力律规模;所有滞后的连续订单的日志结构函数的线性关系,称为扩展自我相似性或ESS;结构函数幂律指数的非线性缩放,具有功能顺序,在文献中常见的现象是多分泌物。在其他地方,我们提出,探索和展示了一种新的地统计学推理方法,捕获了统一理论框架内的所有这些现象。框架视图数据作为来自随机字段的样本,构成截短的(单元形)分数褐色运动(TFBM)或分数高斯噪声(TFGN)的刻度混合物。以前研究未解决的重要问题涉及极端增量值的分布和统计缩放。特别兴趣的水文(和许多其他领域)是绝对增量的统计数据超过给定阈值,称为阈值或盆的峰。在本文中,我们探讨了数据的统计缩放,并且第一次与来自TFBM或TFGN的比例混合物相关的样品相关的相应罐。我们证明我们分析了这些样本的性质,因此遵循我们提出的理论。孔隙度数据具有额外的价值,可以在某些滞后显示出从一个缩放制度到另一个缩放制度的额外值。我们揭示的现象具有对流体流动和溶质的分析以及复杂的水文地理环境中的颗粒式运输的重要性。

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