A non-stationary geostatistical approach to multigaussian kriging for local reserve estimation

被引:0
作者
Mainak Thakur
Biswajit Samanta
Debashish Chakravarty
机构
[1] Université de Rennes 1 Beaulieu,Institut de recherche mathématique de Rennes (IRMAR
[2] Indian Institute of Technology, UMR CNRS 6625)
来源
Stochastic Environmental Research and Risk Assessment | 2018年 / 32卷
关键词
Multigaussian kriging; Simulation; Reserve estimation; Hermite polynomial; Non-stationary; Kernel;
D O I
暂无
中图分类号
学科分类号
摘要
Multigaussian kriging technique has many applications in mining, soil science, environmental science and other fields. Particularly, in the local reserve estimation of a mineral deposit, multigaussian kriging is employed to derive panel-wise tonnages by predicting conditional probability of block grades. Additionally, integration of a suitable change of support model is also required to estimate the functions of the variables with larger support than that of the samples. However, under the assumption of strict stationarity, the grade distributions and important recovery functions are estimated by multigaussian kriging using samples within a supposedly spatial homogeneous domain. Conventionally, the underlying random function model is required to be stationary in order to carry out the inference on ore grade distribution and relevant statistics. In reality, conventional stationary model often fails to represent complicated geological structure. Traditionally, the simple stationary model neither considers the obvious changes in local means and variances, nor is it able to replicate spatial continuity of the deposit and hence produces unreliable outcomes. This study deals with the theoretical design of a non-stationary multigaussian kriging model allowing change of support and its application in the mineral reserve estimation scenario. Local multivariate distributions are assumed here to be strictly stationary in the neighborhood of the panels. The local cumulative distribution function and related statistics with respect to the panels are estimated using a distance kernel approach. A rigorous investigation through simulation experiments is performed to analyze the relevance of the developed model followed by a case study on a copper deposit.
引用
收藏
页码:2381 / 2404
页数:23
相关论文
共 55 条
[1]  
Afzal P(2015)Multi-Gaussian kriging: a practice to enhance delineation of mineralized zones by Concentration–Volume fractal model in Dardevey iron ore deposit, SE Iran J Geochem Explor 158 10-21
[2]  
Madani N(1996)Geographically weighted regression: a method for exploring spatial nonstationarity Geogr Anal 28 281-298
[3]  
Shahbeik S(2002)Geographically weighted summary statistics-a framework for localised exploratory data analysis Comput Environ Urban 26 501-524
[4]  
Yasrebi AB(2005)Simple and ordinary multigaussian kriging for estimating recoverable reserves Math Geol 37 295-319
[5]  
Brunsdon C(2006)Ordinary multigaussian kriging for mapping conditional probabilities of soil properties Geoderma 132 75-88
[6]  
Fotheringham AS(2006)Two ordinary kriging approaches to predicting block grade distributions Math Geol 38 801-819
[7]  
Charlton ME(2008)Uncertainty modeling and spatial prediction by multi-Gaussian kriging: accounting for an unknown mean value Comput Geosci 34 1431-1442
[8]  
Brunsdon C(2005)Models for support and information effects: a comparative study Math Geol 37 49-68
[9]  
Fotheringham A(1997)Trends in quantitative methods 1: stressing the local Prog Hum Geogr 21 88-96
[10]  
Charlton M(1998)Geographically weighted regression: a natural evolution of the expansion method for spatial data analysis Environ Plan A 30 1905-1927