Haji Abolhassani Amir Abbas, Dimitrakopoulos Roussos, Ferrie Frank P, Yao Lingqing
COSMO - Stochastic Mine Planning Laboratory, McGill University, Montreal, QC Canada.
Centre for Intelligent Machines, McGill University, Montreal, QC Canada.
Math Geosci. 2022;54(6):1097-1119. doi: 10.1007/s11004-022-10004-2. Epub 2022 Jun 16.
A new non-stationary, high-order sequential simulation method is presented herein, aiming to accommodate complex curvilinear patterns when modelling non-Gaussian, spatially distributed and variant attributes of natural phenomena. The proposed approach employs spatial templates, training images and a set of sample data. At each step of a multi-grid approach, a template consisting of several data points and a simulation node located in the center of the grid is selected. To account for the non-stationarity exhibited in the samples, the data events decided by the conditioning data are utilized to calibrate the importance of the related replicates. Sliding the template over the training image generates a set of training patterns, and for each pattern a weight is calculated. The weight value of each training pattern is determined by a similarity measure defined herein, which is calculated between the data event of the training pattern and that of the simulation pattern. This results in a non-stationary spatial distribution of the weight values for the training patterns. The proposed new similarity measure is constructed from the high-order statistics of data events from the available data set, when compared to their corresponding training patterns. In addition, this new high-order statistics measure allows for the effective detection of similar patterns in different orientations, as these high-order statistics conform to the commutativity property. The proposed method is robust against the addition of more training images due to its non-stationary aspect; it only uses replicates from the pattern database with the most similar local high-order statistics to simulate each node. Examples demonstrate the key aspects of the method.
本文提出了一种新的非平稳高阶序贯模拟方法,旨在对自然现象的非高斯、空间分布和可变属性进行建模时适应复杂的曲线模式。所提出的方法采用空间模板、训练图像和一组样本数据。在多网格方法的每个步骤中,选择一个由几个数据点和位于网格中心的模拟节点组成的模板。为了考虑样本中表现出的非平稳性,利用由条件数据决定的数据事件来校准相关重复样本的重要性。在训练图像上滑动模板会生成一组训练模式,并为每个模式计算一个权重。每个训练模式的权重值由本文定义的相似性度量确定,该相似性度量是在训练模式的数据事件与模拟模式的数据事件之间计算的。这导致训练模式的权重值呈现非平稳空间分布。与相应的训练模式相比,所提出的新相似性度量是根据可用数据集的数据事件的高阶统计量构建的。此外,这种新的高阶统计量度量允许有效检测不同方向上的相似模式,因为这些高阶统计量符合交换律性质。由于其非平稳特性,所提出的方法对添加更多训练图像具有鲁棒性;它仅使用来自模式数据库中具有最相似局部高阶统计量的重复样本对每个节点进行模拟。实例展示了该方法的关键要点。