A mineralogy characterisation technique for copper ore in flotation pulp using deep learning machine vision with optical microscopy

Edwin J.Y. Koh, Eiman Amini, Carlos A. Spier, Geoffrey J. McLachlan, Weiguo Xie, Nick Beaton

Research output: Contribution to journalArticlepeer-review

Abstract

Among the flotation system process variables, mineralogy is the most difficult one to measure online. Mineralogy is typically measured through methods like Mineral Liberation Analysis (MLA) and QEMSCAN but these require sample preparation in polished sections only providing results after days or shifts. Alternatively, process plants utilise X-Ray Fluorescence (XRF) or Laser Induced Breakdown Spectroscopy (LIBS) to measure elemental grades online. However, the flotation performance is dictated by surface liberation of minerals rather than elemental grade. Recently, researchers have tried using optical microscopy to characterise mineralogy for an isolated particle, but this is not scalable for measuring process streams. This study investigates a technique utilising deep learning machine vision and optical microscopy for in-pulp characterisation of mineralogy and particle size distribution for multiple minerals in a copper ore pulp. The methodology was developed on samples from a polymetallic deposit in New South Wales, Australia that contained Cu, Pb, Zn, and Fe sulfides. This technique can predict the particle size, and mineralogy for chalcopyrite, quartz, and other sulfides in-pulp within 5 min.

Original languageEnglish (US)
Article number108481
JournalMinerals Engineering
Volume205
DOIs
StatePublished - Jan 2024

Bibliographical note

Publisher Copyright:
© 2023 The Author(s)

Keywords

  • Copper ore
  • Flotation pulp
  • Instance segmentation
  • Machine vision
  • Mineralogy characterisation
  • Optical microscopy

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