One of the most challenging aspects of multivariate geostatistics is dealing with complex relationships between variables. Geostatistical co-simulation and spatial decorrelation methods, commonly used for modelling multiple variables, are ineffective in the presence of multivariate complexities. On the other hand, multi-Gaussian transforms are designed to deal with complex multivariate relationships, such as non-linearity, heteroscedasticity and geological constraints. These methods transform the variables into independent multi-Gaussian factors that can be individually simulated. This study compares the performance of the following multi-Gaussian transforms: rotation based iterative Gaussianisation, projection pursuit multivariate transform and flow transformation. Case studies with bivariate complexities are used to evaluate and compare the realisations of the transformed values. For this purpose, commonly used geostatistical validation metrics are applied, including multivariate normality tests, reproduction of bivariate relationships, and histogram and variogram validation. Based on most of the metrics, all three methods produced results of similar quality. The most obvious difference is the execution speed for forward and back transformation, for which flow transformation is much slower.
翻译:多变量地质统计学最具有挑战性的方面之一是处理各种变量之间的复杂关系。在多变量复杂的情况下,通常用于建模多个变量的地球统计共同模拟和空间装饰方法在多变量复杂的情况下是无效的。另一方面,多千变式变换设计是为了处理复杂的多变量关系,如非线性、超摄氏性和地质限制等。这些方法将变量转化为独立的多-Gaussian因素,可以单独模拟。本研究比较了以下多种-Gaussian变换的性能:基于旋转的迭代高频化、投影的多变量变换和流变换。使用双变量的案例研究来评估和比较变异值的实现情况。为此,通常使用的地理统计验证指标被应用,包括多变异性正常性测试、双变量关系的复制、以及直方图和变动图的验证。根据大多数计量,所有三种方法都产生了类似质量的结果。最明显的差异是前向和变动的速度。最慢的是前向和后向的变动速度。