...
首页> 外文期刊>Stochastic environmental research and risk assessment >Sub-Gaussian model of processes with heavy-tailed distributions applied to air permeabilities of fractured tuff
【24h】

Sub-Gaussian model of processes with heavy-tailed distributions applied to air permeabilities of fractured tuff

机译:具有重尾分布的过程的高斯模型,用于压裂凝灰岩的透气率

获取原文
获取原文并翻译 | 示例

摘要

Earth and environmental variables are commonly taken to have multivariate Gaussian or heavy-tailed distributions in space and/or time. This is based on the observation that univariate frequency distributions of corresponding samples appear to be Gaussian or heavy-tailed. Of particular interest to us is the well-documented but heretofore little noticed and unexplained phenomenon that whereas the frequency distribution of log permeability data often seems to be Gaussian, that of corresponding increments tends to exhibit heavy tails. The tails decay as powers of -α where 1 < α < 2 is either constant or grows monotonically toward an asymptote with increasing separation distance or lag. We illustrate the latter phenomenon on 1-m scale log air permeabilities from pneumatic tests in 6 vertical and inclined boreholes completed in unsaturated fractured tuff near Superior, Arizona. We then show theoretically and demonstrate numerically, on synthetically generated signals, that whereas the case of constant a is consistent with a collection of samples from truncated sub-Gaussian fractional Levy noise, a random field (or process) subordinated to truncated fractional Gaussian noise, the case of variable a is consistent with a collection of samples from truncated sub-Gaussian fractional Levy motion (tfLm), a random field subordinated to truncated fractional Brownian motion. Whereas the first type of signal is relatively regular and characterized by Levy index α, the second is highly irregular (punctuated by spurious spikes) and characterized by the asymptote of a values associated with its increments. We describe a procedure to estimate the parameters of univariate distributions characterizing such signals and apply it to our log air permeability data. The latter are found to be consistent with a collection of samples from tfLm with α slightly smaller than 2, which is easily confused with a Gaussian field (characterized by constant α = 2). The irregular (spiky) nature of this signal is typical of observed fractured rock properties. We propose that distributions of earth and environmental variable be inferred jointly from measured values and their increments in a way that insures consistency between these two sets of data.
机译:通常认为地球和环境变量在空间和/或时间上具有多元高斯分布或重尾分布。这是基于以下观察:相应样本的单变量频率分布似乎是高斯或重尾的。对我们特别感兴趣的是有据可查的文件,但迄今为止很少有人注意和无法解释的现象,尽管对数渗透率数据的频率分布通常似乎是高斯分布,但相应增量的频率分布往往会出现粗尾。尾部随着-α的幂而衰减,其中1 <α<2是恒定的,或者随着分离距离或滞后的增加而朝向渐近线单调增长。我们通过在亚利桑那州苏必利尔附近的非饱和裂缝凝灰岩中完成的6个垂直和倾斜钻孔的气动测试,以1米标尺测得的空气渗透率说明了后者。然后,我们在合成生成的信号上进行了理论上的展示和数值上的证明,而常数a的情况与从截断的次高斯分数Levy噪声,从属于截断的分数高斯噪声的随机场(或过程)的样本集合一致,变量a的情况与截断的次高斯分数Levy运动(tfLm)的样本集合一致,tfLm是从属于截断的分数布朗运动的随机字段。第一种信号是相对规则的,并以Levy指数α为特征,而第二种信号则是高度不规则的(由虚假尖峰点缀),并以与其增量相关的值的渐近线为特征。我们描述了一种程序来估计表征此类信号的单变量分布的参数,并将其应用于我们的对数空气渗透率数据。发现后者与来自tfLm的样本集合一致,该样本的α略小于2,很容易与高斯场混淆(特征在于常数α= 2)。该信号的不规则(尖峰)性质是观察到的裂隙岩石特性的典型特征。我们建议从测量值及其增量中共同推断地球和环境变量的分布,以确保这两套数据之间的一致性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号