Mineral resource modelling using an unequal sampling pattern: An improved practice based on factorization techniques

- Organization:
- The Southern African Institute of Mining and Metallurgy
- Pages:
- 11
- File Size:
- 2059 KB
- Publication Date:
- Aug 1, 2021
Abstract
This work addresses the problem of geostatistical simulation of cross-correlated variables by
factorization approaches in the case when the sampling pattern is unequal. A solution is presented,
based on a Co-Gibbs sampler algorithm, by which the missing values can be imputed. In this algorithm,
a heterotopic simple cokriging approach is introduced to take into account the cross-dependency of the undersampled variable with the secondary variable that is more available over the entire region.
A real gold deposit is employed to test the algorithm. The imputation results are compared with other
Gibbs sampler techniques for which simple cokriging and simple kriging are used. The results show
that heterotopic simple cokriging outperforms the other two techniques. The imputed values are then
employed for the purpose of resource estimation by using principal component analysis (PCA) as a factorization technique, and the output compared with traditional factorization approaches where the
heterotopic part of the data is removed. Comparison of the results of these two techniques shows that the latter leads to substantial losses of important information in the case of an unequal sampling pattern,
while the former is capable of reproducing better recovery functions.
Citation
APA:
(2021) Mineral resource modelling using an unequal sampling pattern: An improved practice based on factorization techniquesMLA: Mineral resource modelling using an unequal sampling pattern: An improved practice based on factorization techniques. The Southern African Institute of Mining and Metallurgy, 2021.