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Direct Pattern-Based Simulation of Non-stationary Geostatistical Models

机译:基于直接模式的非平稳地统计模型模拟

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Non-stationary models often capture better spatial variation of real world spatial phenomena than stationary ones. However, the construction of such models can be tedious as it requires modeling both statistical trend and stationary stochastic component. Non-stationary models are an important issue in the recent development of multiple-point geostatistical models. This new modeling paradigm, with its reliance on the training image as the source for spatial statistics or patterns, has had considerable practical appeal. However, the role and construction of the training image in the non-stationary case remains a problematic issue from both a modeling and practical point of view. In this paper, we provide an easy to use, computationally efficient methodology for creating non-stationary multiple-point geostatistical models, for both discrete and continuous variables, based on a distance-based modeling and simulation of patterns. In that regard, the paper builds on pattern-based modeling previously published by the authors, whereby a geostatistical realization is created by laying down patterns as puzzle pieces on the simulation grid, such that the simulated patterns are consistent (in terms of a similarity definition) with any previously simulated ones. In this paper we add the spatial coordinate to the pattern similarity calculation, thereby only borrowing patterns locally from the training image instead of globally. The latter would entail a stationary assumption. Two ways of adding the geographical coordinate are presented, (1) based on a functional that decreases gradually away from the location where the pattern is simulated and (2) based on an automatic segmentation of the training image into stationary regions. Using ample two-dimensional and three-dimensional case studies we study the behavior in terms of spatial and ensemble uncertainty of the generated realizations.
机译:非平稳模型通常比固定模型捕获更好的现实世界空间现象的空间变化。但是,此类模型的构建可能很繁琐,因为它需要对统计趋势和静态随机成分进行建模。在多点地统计模型的最新发展中,非平稳模型是一个重要的问题。这种新的建模范例依赖于训练图像作为空间统计或模式的来源,因此具有很大的实际吸引力。然而,从建模和实践的角度来看,训练图像在非平稳情况下的作用和构建仍然是一个有问题的问题。在本文中,我们基于基于距离的建模和模式模拟,为离散变量和连续变量创建非平稳多点地统计模型提供了一种易于使用,计算效率高的方法。在这方面,本文建立在作者先前发布的基于模式的建模的基础上,通过将模式作为拼图碎片放置在模拟网格上来创建地统计实现,从而使模拟模式保持一致(就相似性定义而言) )与任何以前模拟的。在本文中,我们将空间坐标添加到模式相似度计算中,从而仅从训练图像中局部借用模式,而不是从全局借用模式。后者将需要一个固定的假设。提出了两种添加地理坐标的方式:(1)基于一种功能,该功能会逐渐远离模拟模式的位置;(2)基于将训练图像自动分割成固定区域的功能。使用大量的二维和三维案例研究,我们根据生成的实现的空间和整体不确定性来研究行为。

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