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Geostatistical simulation when the number of experimental data is small: an alternative paradigm

机译:实验数据量少时的地统计模拟:一种替代范例

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The usual paradigm in the application of geostatistical simulation has been to use a variogram model and a simulation algorithm to generate multiple realizations (conditional or non-conditional) of the random function model. In general the variogram model is inferred from the experimental data and then it has an uncertainty which can be large if the number of experimental data is small. However, this variogram uncertainty has usually been ignored, with the consequence that the simulated fields could be reproducing a spatial variability that does not mimic the underlying variability. Certainly there is an amount of variability in the local variogram of each simulated realization because of the ergodic fluctuations of the simulation algorithm that has been used. But we show in this paper that when the number of experimental data is small (which is not unusual in some disciplines of geosciences, such as groundwater hydrology or petroleum engineering) the description of the true underlying variability of the spatial variable may not be covered by the ergodic fluctuations of the random field realizations. Thus a change of paradigm is required. In the new paradigm, the uncertainty of the variogram parameters is taken into account and propagated into the simulations in a statistical way in order to cover up the underlaying variability. This alternative paradigm does not require new simulation algorithms; rather, it calls for choosing more carefully the range of variogram models (in opposition to using only the estimated model) that will be injected into the simulation algorithm. An example illustrates how the application of this approach is straightforward and can be important in reliability studies where geostatistical simulation is used to model the spatial uncertainty of a regionalized variable between the experimental locations.
机译:地统计学模拟应用中通常的范例是使用变异函数模型和模拟算法来生成随机函数模型的多种实现(有条件或无条件)。通常,从实验数据推断出变异函数模型,然后,如果实验数据的数量少,则不确定性可能会很大。但是,这种变异函数的不确定性通常被忽略,其结果是,模拟场可能正在再现不模拟潜在变异性的空间变异性。当然,由于已使用的模拟算法的遍历波动,每个模拟实现的局部变异函数中都存在一定的可变性。但是我们在本文中表明,当实验数据的数量很少时(这在某些地质科学学科(例如地下水水文学或石油工程学中并不罕见)),对空间变量的真实潜在变异性的描述可能不会被覆盖。随机场实现的遍历波动。因此,需要改变范式。在新的范式中,考虑了变异函数参数的不确定性,并以统计的方式传播到模拟中,以掩盖底层变异性。这种替代范例不需要新的仿真算法。相反,它要求更仔细地选择将要注入模拟算法的变异函数模型范围(与仅使用估计的模型相反)。一个例子说明了这种方法的应用是如何简单明了的,并且在可靠性研究中很重要,在可靠性研究中,地统计模拟被用来模拟实验位置之间区域变量的空间不确定性。

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