Predictive Geological Mapping Using Closed-Form Non-stationary Covariance Functions with Locally Varying Anisotropy: Case Study at El Teniente Mine (Chile)

被引:0
作者
Francky Fouedjio
Serge Séguret
机构
[1] CSIRO Mineral Resources,MINES ParisTech
[2] PSL Research University,undefined
[3] Centre de Géosciences,undefined
来源
Natural Resources Research | 2016年 / 25卷
关键词
Mining; Geostatistics; Non-stationarity; Locally varying anisotropy; Covariance function; Kriging ; Simulation;
D O I
暂无
中图分类号
学科分类号
摘要
This paper is concerned with the problem of predicting the surface elevation of the Braden breccia pipe at the El Teniente mine in Chile. This mine is one of the world’s largest and most complex porphyry-copper ore systems. As the pipe surface constitutes the limit of the deposit and the mining operation, predicting it accurately is important. The problem is tackled by applying a geostatistical approach based on closed-form non-stationary covariance functions with locally varying anisotropy. This approach relies on the mild assumption of local stationarity and involves a kernel-based experimental local variogram a weighted local least-squares method for the inference of local covariance parameters and a kernel smoothing technique for knitting the local covariance parameters together for kriging purpose. According to the results, this non-stationary geostatistical method outperforms the traditional stationary geostatistical method in terms of prediction and prediction uncertainty accuracies.
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页码:431 / 443
页数:12
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