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首页> 外文期刊>Mathematical Geosciences >T-distributed Random Fields: A Parametric Model for Heavy-tailedWell-log Data1
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T-distributed Random Fields: A Parametric Model for Heavy-tailedWell-log Data1

机译:T分布随机字段:重尾井测井数据的参数模型

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摘要

Histograms of observations from spatial phenomena are often found to be more heavy-tailed than Gaussian distributions, which makes the Gaussian random field model unsuited. A T-distributed random field model with heavy-tailed marginal probability density functions is defined. The model is a generalization of the familiar Student-T distribution, and it may be given a Bayesian interpretation. The increased variability appears cross-realizations, contrary to in-realizations, since all realizations are Gaussian-like with varying variance between realizations. The T-distributed random field model is analytically tractable and the conditional model is developed, which provides algorithms for conditional simulation and prediction, so-called T-kriging. The model compares favourably with most previously defined random field models. The Gaussian random field model appears as a special, limiting case of the T-distributed random field model. The model is particularly useful whenever multiple, sparsely sampled realizations of the random field are available, and is clearly favourable to the Gaussian model in this case. The properties of the T-distributed random field model is demonstrated on well log observations from the Gullfaks field in the North Sea. The predictions correspond to traditional kriging predictions, while the associated prediction variances are more representative, as they are layer specific and include uncertainty caused by using variance estimates.
机译:通常发现,从空间现象观察到的直方图比高斯分布更重尾,这使高斯随机场模型不适合使用。定义了带有重尾边际概率密度函数的T分布随机场模型。该模型是熟悉的Student-T分布的概括,并且可以给出贝叶斯解释。与内部实现相反,增加的可变性是交叉实现,因为所有实现都是高斯式的,实现之间存在变化。 T分布随机场模型具有解析力易处理性,并且开发了条件模型,该模型提供了用于条件仿真和预测的算法,即所谓的T-克里格法。该模型与大多数先前定义的随机场模型相比具有优势。高斯随机场模型是T分布随机场模型的一种特殊的极限情况。只要有多个稀疏采样的随机域实现可用,该模型就特别有用,在这种情况下,该模型显然对高斯模型有利。 T分布随机场模型的性质在北海Gullfaks场的测井资料中得到了证明。这些预测与传统的克里金法预测相对应,而相关的预测方差更具代表性,因为它们是特定于图层的,并且包括使用方差估计导致的不确定性。

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