Methodology and Model to Predict HPGR Throughput Based on Piston Press Testing

Author:

Pamparana GiovanniORCID,Klein Bern,Bergerman Mauricio GuimaraesORCID

Abstract

Sizing High-Pressure Grinding Rolls (HPGR) requires a large quantity of material, making it not attractive and costly to be considered for new mining projects regardless of their energy consumption reduction benefits. Ongoing efforts are being made at the University of British Columbia to predict the behaviour of the HPGR using a low quantity of material on a piston-and-die press apparatus. Although the energy requirements and size reduction predictive models are already developed, there is still a need to predict the HPGR throughput on a small-scale test. This paper presents a new model to predict the HPGR throughput based on the previously developed model to predict the operational gap by using less than 2 kg of sample. The throughput model was developed using machine learning techniques and calibrated using pilot-scale HPGR tests and piston press tests. The resulting model has an R2 of 0.91 with an average prediction error of ±4.2%. The developed methodology has the potential to fill the gap of the missing throughput model. Further pilot-scale HPGR testing is required to continue validating the model.

Funder

Agencia Nacional de Investigación y Desarrollo

Publisher

MDPI AG

Subject

Geology,Geotechnical Engineering and Engineering Geology

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