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Calculating Similarity Among Geological Simulated Images and Reference Images Using Principal Component Analysis

机译:使用主成分分析计算地质模拟图像中的相似性和参考图像

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The main problem of geostatistical simulations is to reproduce the real characteristics of the mineral deposit when there are few conditioning data. In this case, the geological interpretation, based on structures, geophysics and geological maps, plays the major role in terms of resource evaluation. The paper investigates the use of principal component analysis (PCA) to help classify multiple geostatistical categorical simulations considering the similarity among them and the interpreted model, herein referred as training image (TI). An iron deposit with four lithological facies, in a specifi c horizontal plane, was used as case study for two-dimensional (2D) simulations. Sequential indicator simulations (SIS) was used to obtain ten equally probable 2D images, which were generated and compared against the interpreted model (TI). In this study, 11 random variables are comprised by the vector of ten SIS realisations plus the training image (TI). The similarity between the TI and each SIS realisation is measured using the angle between the TI and SIS vectors projected in the new coordinate systems (PCA factors). It is possible to order the SIS realisations from the highest to the lowest PCA factor taking into account the TI similarity. The visual analysis of the images shows coherence in the PCA results as a method to measure similarity. This methodology can be used as a post-processing tool to rank simulation results and to select the ones which better represent the prior known geology or to compare the quality of different methods of simulation.
机译:地质统计模拟的主要问题是在少数条件数据时重现矿床的真实特征。在这种情况下,基于结构,地球物理和地质图的地质解释在资源评估方面发挥了重要作用。本文调查了主要成分分析(PCA)来帮助分类考虑到它们的相似性和解释模型的多个地质统计分类模拟,这里称为训练图像(TI)。在特定C水平平面中具有四个岩性相的铁沉积物,用作二维(2D)模拟的案例研究。顺序指示器模拟(SIS)用于获得十个同样可能的2D图像,其被生成并与解释模型(TI)进行比较。在本研究中,11个随机变量由十个SIS实现的向量加上训练图像(TI)构成。使用在新坐标系(PCA因子)中投影的TI和SIS矢量之间的角度来测量TI和每个SIS实现之间的相似性。考虑到TI相似度,可以从最高到最低PCA因子的最高PCA因子中的SIS实现。图像的视觉分析显示PCA中的相干性导致作为测量相似性的方法。该方法可以用作排序模拟结果的后处理工具,并选择更好地代表现有已知地质的后处理工具,或者比较不同模拟方法的质量。

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