Mining (Oct 2024)

An AI-Based Approach for Developing a Recommendation System for Underground Mining Methods Pre-Selection

  • Elsa Pansilvania Andre Manjate,
  • Natsuo Okada,
  • Yoko Ohtomo,
  • Tsuyoshi Adachi,
  • Bernardo Miguel Bene,
  • Takahiko Arima,
  • Youhei Kawamura

DOI
https://doi.org/10.3390/mining4040042
Journal volume & issue
Vol. 4, no. 4
pp. 747 – 765

Abstract

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Selecting the most appropriate mining method to recover mineral resources is a critical decision-making task in mining project development. This study introduces an artificial intelligence-based mining methods recommendation system (AI-MMRS) for the pre-selection of underground mining methods. The study integrates and evaluates the capability of two approaches for mining methods selection (MMS): the memory-based collaborative filtering (CF) approach aided by the UBC-MMS system to predict the top-3 relevant mining methods and supervised machine learning (ML) classification algorithms to enhance the effectiveness and novelty of the AI-MMRS, addressing the limitations of the CF approach. The results reveal that the memory-based CF approach achieves an accuracy ranging from 81.8% to 87.9%. Among the classification algorithms, artificial neural network (ANN) and k-nearest neighbors (KNN) classifiers perform the best, with accuracy levels of 66.7% and 63.6%, respectively. These findings demonstrate the effectiveness and viability of both approaches in MMS, acknowledging their limitations and the need for continuous training and optimization. The proposed AI-MMRS for the pre-selection stage supplemented by the direct involvement of mining professionals in later stages of MMS, has the potential to significantly aid in the MMS decision-making, providing data-driven and experience-based recommendations following the ongoing evolution of mining practices.

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