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Inverse Modeling of Moving Average Isotropic Kernels for Non-parametric Three-Dimensional Gaussian Simulation

机译:非参数三维高斯模拟的移动平均各向同性核的逆建模

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摘要

Moving average simulation can be summarized as a convolution between a spatial kernel and a white noise random field. The kernel can be calculated once the variogram model is known. An inverse approach to moving average simulation is proposed, where the kernel is determined based on the experimental variogram map in a non-parametric way, thus no explicit variogram modeling is required. The omission of structural modeling in the simulation work-flow may be particularly attractive if spatial inference is challenging and/or practitioners lack confidence in this task. A non-linear inverse problem is formulated in order to solve the problem of discrete kernel weight estimation. The objective function is the squared euclidean distance between experimental variogram values and the convolution of a stationary random field with Dirac covariance and the simulated kernel. The isotropic property of the kernel weights is imposed as a linear constraint in the problem, together with lower and upper bounds for the weight values. Implementation details and examples are presented to demonstrate the performance and potential extensions of this method.
机译:移动平均模拟可以概括为空间核与白噪声随机场之间的卷积。一旦知道了变异函数模型,就可以计算内核。提出了一种移动平均模拟的逆向方法,该方法基于实验变异函数图以非参数方式确定内核,因此不需要显式的变异函数建模。如果空间推断具有挑战性和/或从业者对此任务缺乏信心,那么在模拟工作流程中省略结构建模可能会特别有吸引力。为了解决离散核权重估计的问题,提出了非线性逆问题。目标函数是实验变异函数值之间的平方欧氏距离,以及具有Dirac协方差和模拟核的平稳随机场的卷积。核权重的各向同性属性以及权重值的上下限在问题中作为线性约束施加。给出了实现细节和示例,以演示该方法的性能和潜在的扩展。

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