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A hierarchical cosimulation algorithm integrated with an acceptance-rejection method for the geostatistical modeling of variables with inequality constraints

机译:一种分层辅助算法,其具有验收抑制方法,用于具有不等式约束的变量的地稳态建模

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摘要

This work addresses the problem of the cosimulation of cross-correlated variables with inequality constraints. A hierarchical sequential Gaussian cosimulation algorithm is proposed to address this problem, based on establishing a multicollocated cokriging paradigm; the integration of this algorithm with the acceptance-rejection sampling technique entails that the simulated values first reproduce the bivariate inequality constraint between the variables and then reproduce the original statistical parameters, such as the global distribution and variogram. In addition, a robust regression analysis is developed to derive the coefficients of the linear function that introduces the desired inequality constraint. The proposed algorithm is applied to cosimulate Silica and Iron in an Iron deposit, where the two variables exhibit different marginal distributions and a sharp inequality constraint in the bivariate relation. To investigate the benefits of the proposed approach, the Silica and Iron are cosimulated by other cosimulation algorithms, and the results are compared. It is shown that conventional cosimulation approaches are not able to take into account and reproduce the linearity constraint characteristics, which are part of the nature of the dataset. In contrast, the proposed hierarchical cosimulation algorithm perfectly reproduces these complex characteristics and is more suited to the actual dataset.
机译:这项工作解决了与不等式约束的互相关变量的问题。提出了一种分层序贯高斯辅助算法来解决这个问题,基于建立多堆积的焦化范例;该算法与接受抑制采样技术的集成需要模拟值首先再现变量之间的二偏见不等式约束,然后再现原始统计参数,例如全局分布和变速仪。另外,开发了一种强大的回归分析来导出引入所需的不等式约束的线性函数的系数。所提出的算法应用于在铁沉积中沉淀二氧化硅和铁,其中两个变量表现出不同的边际分布和相成型关系中的急剧不平等约束。为了研究所提出的方法的益处,二氧化硅和铁由其他辅助算法化妆,并比较结果。结果表明,传统的辅助方法无法考虑并再现线性限制特征,这是数据集的本质的一部分。相反,所提出的分层辅助算法完全再现了这些复杂特性,并且更适合实际数据集。

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