Abstract

In a mine, knowledge of rock types is often desired as they are important indicators of grade, mineral processing complications, or geotechnical attributes. It is common to model the rock types with visual graphics tools using geologist-generated rock type information in exploration drillhole databases. Instead of this manual approach, this paper used random forest (RF), a machine learning (ML) algorithm, to model the rock type at Erdenet Copper Mine, Mongolia. Exploration drillhole data was used to develop the RF models and predict the rock type based on the coordinates of locations. Data selection and model evaluation methods were designed to ensure applicability for real life scenarios. In the scenario where rock type is predicted close to locations where information is available (such as in blocks being blasted), RF did very well with an overall success rate (OSR) of 89%. In the scenario where rock type was predicted for two future benches (i.e., 30 m below known locations), the best OSR was 86%. When an exploration program was simulated, performance was poor with a OSR of 59%. The results indicate that EMC can leverage RF models for short-term and long-term planning by predicting rock types within drilling blocks or future blocks quite accurately.

Highlights

  • This paper is not intended to be a manual on random forest (RF)

  • Most mining operations either use the manually developed rock type models or sensor technologies to make assumptions on the rock types contained within a drill block, or in

  • Sor technologies to make on the rock types contained drill block, or the gaps

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Summary

Introduction

This paper is not intended to be a manual on random forest (RF). Those seeking a deeper understanding are referred to [29], the source for this introduction. In machine learning terminology, ‘feature’ refers to a database field. A drillhole database that contains the coordinates (northing, easting, elevation) and the rock type code has four features. A RF developed to determine the rock type will be based on three features (northing, easting, elevation)

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