Heterogeneity and bulk ore sorting – methods to estimate ore sorting performance

- Organization:
- The Australasian Institute of Mining and Metallurgy
- Pages:
- 9
- File Size:
- 488 KB
- Publication Date:
- Nov 10, 2020
Abstract
Technological advances in sensor and material handling technology has enabled a step change in
mine operations performance. Sensors capable of monitoring the grade of broken rock mass can be
mounted on shovels, truck loading units or conveyors allowing highly precise ore/waste decisions to
be made on small parcels of rock, increasing selectivity. This increased selectivity has the potential
to remove sub-economic material from the product stream prior to incurring ore treatment costs. Bulk
ore sorting is capable of intervening at <10t “pods” on Run Of Mine conveyors, or alternatively at per
bucket loading (5-100t) or truck scale (30-350t) parcels of ore. This Grade Engineering technique
being developed by CRCORE (Rutter, 2017) can improve mill feed grade, remove deleterious
materials and ensure that the high capital intensity ore treatment facility is presented with the best
ore feed strategy.
While this technology can improve mine economics, estimating the performance of a bulk ore sorting
system is challenging. Traditional resource estimation practices such as Ordinary Kriging and
Inverse distance weighting (IDW) are based on weighted averages, a process that smooths the
grade profile, reducing modelled variance and dispersion. Its purpose is to generate a globally
unbiased result but is less suited to generating a model of adequate granularity to enable confidence
in local grade heterogeneity. This is an essential component for bulk ore sorting success. Estimating
ore sorting performance requires knowledge of the grade-tonnage curve at the scale of the sensor
diversion unit (SDU). Evaluation based on an estimator that smooths the SDU distribution will not
correctly predict ore/waste separation or economic performance.
Alternatives to traditional linear geostatistics have been tested on a variety of mineralisation styles.
Additionally, a number of heterogeneity metrics have been developed to assist with evaluation and
assessment. The difference between estimation for grade (metal) and modelling for traditional mining
block models, versus methods used for predicting heterogeneity and variability are explored.
Citation
APA:
(2020) Heterogeneity and bulk ore sorting – methods to estimate ore sorting performanceMLA: Heterogeneity and bulk ore sorting – methods to estimate ore sorting performance. The Australasian Institute of Mining and Metallurgy, 2020.