An algorithm for quantifying regionalized ore grades - Synopsis

- Organization:
- The Southern African Institute of Mining and Metallurgy
- Pages:
- 8
- File Size:
- 2227 KB
- Publication Date:
- Jan 1, 2008
Abstract
We present a novel hybrid algorithm for quantifying the ore grade variability that has central importance in ore reserve estimation. The proposed algorithm has three stages: (1) fuzzy clustering, (2) similarity measure, and (3) grade estimation. The method first considers data clustering, and then uses the clustering information for quantifying the ore grades by means of a cumulative point semimadogram function. The method provides a measure of similarity and gives an indication of the regional heterogeneity. In addition, grade estimations can be obtained at different levels of similarity using a weighting function, which is the standard regional dependence function (SRDF). Keywords: Grade, fuzzy clustering, similarity measure, point madogram, weighting function.
Citation
APA: (2008) An algorithm for quantifying regionalized ore grades - Synopsis
MLA: An algorithm for quantifying regionalized ore grades - Synopsis. The Southern African Institute of Mining and Metallurgy, 2008.