On the Challenges of Applying Machine Learning in Mineral Processing and Extractive Metallurgy

Author:

Estay Humberto1ORCID,Lois-Morales Pía12,Montes-Atenas Gonzalo23,Ruiz del Solar Javier14ORCID

Affiliation:

1. Advanced Mining Technology Center (AMTC), University of Chile, Santiago 8370451, Chile

2. Department of Mining Engineering, University of Chile, Santiago 8370451, Chile

3. Minerals and Metals Characterisation and Separation Research Group, Department of Mining Engineering, University of Chile, Santiago 8370451, Chile

4. Department of Electrical Engineering, University of Chile, Santiago 8370451, Chile

Abstract

The application of Machine Learning in Mineral Processing and Extractive Metallurgy has important benefits in terms of increasing the predictability and controllability of the processes, optimizing their performance, and improving maintenance. However, this application has significant implementation challenges. This paper analyzes these challenges and proposes ways of addressing them. Among the main identified challenges are data scarcity and the difficulty in characterizing abnormal events/conditions as well as modeling processes, which require the creative use of different learning paradigms as well as incorporating phenomenological models in the data analysis process, which can make the learning process more efficient. Other challenges are related to the need of developing reliable in-line sensors, adopting interoperability data models and tools, and implementing the continuous measurement of critical variables. Finally, the paper stresses the need for training of advanced human capital resources with the required skills to address these challenges.

Funder

Chilean National Research Agency ANID

Publisher

MDPI AG

Subject

Geology,Geotechnical Engineering and Engineering Geology

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