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Localised kriging parameter optimisation based on absolute error minimisation

机译:基于绝对误差最小化的本地化Kriging参数优化

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摘要

The definition of the search neighbourhood in kriging can have a significant impact on the resulting estimates. Stationary domains are usually estimated using a unique search strategy for the entire domain. However, the use of a global search neighbourhood ignores the local variations within each domain, i.e. all blocks are interpolated using a unique search strategy. In this paper, localised kriging parameter optimisation (LKPO) is proposed as an alternative methodology that considers the best 'local estimation parameter settings' block by block. The optimisation process is based on absolute error minimisation obtained in cross-validation. Two datasets are presented, the first is a synthetic mineral deposit (2D) and the second is a gold deposit (3D). A wide variety of validation checks show that the use of local kriging parameters significantly improves the grade estimation, obtaining more precise and accurate results than the methodologies currently available in the geostatistical literature.
机译:在Kriging中的搜索邻域的定义可能对所产生的估计产生重大影响。通常使用整个域的唯一搜索策略估计静止域。然而,使用全局搜索邻域忽略每个域内的本地变体,即,所有块都是使用唯一的搜索策略内容的。在本文中,提出了本地化的Kriging参数优化(LKPO)作为替代方法,其通过块来考虑最佳的“本地估计参数设置”块。优化过程基于交叉验证中获得的绝对误差最小化。提出了两个数据集,首先是合成矿床(2D),第二个是金矿床(3D)。各种验证检查表明,使用本地Kriging参数显着提高了等级估计,比地质统计文献目前可用的方法获得更精确和准确的结果。

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