Mineral Resources Evaluation with Mining Selectivity and Information Effect "Mining, Metallurgy & Exploration (2020)"

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 15
- File Size:
- 2730 KB
- Publication Date:
- May 26, 2020
Abstract
The most common approach used in the mining industry for mineral resources modeling is to estimate the grades using
ordinary kriging and report the recoverable resources based on this deterministic estimated model. Mineral resources
calculated with kriging are a smooth representation of the actual distribution of grades and do not provide an assessment
of uncertainty. Unlike kriging, simulation reproduces the variability of the grades in the mineral deposit and provides an
assessment of uncertainty. Reporting mineral resources directly on high-resolution simulation results would assume
perfect knowledge of the grade at the time of mining and selectivity at the scale of the data. There will always be
uncertainty left at the time of mining, so assuming perfect knowledge of the grade in the future is incorrect. There are
two concerns when geostatistical simulation is used for resources modeling: the information and the mining selectivity
effects. A new framework for resource estimation is proposed with two separate modules to address those concerns. The
information effect is accounted for by anticipating the additional production data that will be available at the time mining
to guide the destination for the mined material. The mining selectivity effect is addressed by mimicking the grade control
procedure to get mineable dig limits at a chosen selectivity, represented by a minimum mineable unit size. In addition to
a prediction of recoverable resources that will be closer to the material mined in the future, the framework proposed
provides an assessment of local and global uncertainty for risk management.
Citation
APA:
(2020) Mineral Resources Evaluation with Mining Selectivity and Information Effect "Mining, Metallurgy & Exploration (2020)"MLA: Mineral Resources Evaluation with Mining Selectivity and Information Effect "Mining, Metallurgy & Exploration (2020)". Society for Mining, Metallurgy & Exploration, 2020.