2021
DOI: 10.3390/min11080816
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A Systematic Review on the Application of Machine Learning in Exploiting Mineralogical Data in Mining and Mineral Industry

Abstract: Machine learning is a subcategory of artificial intelligence, which aims to make computers capable of solving complex problems without being explicitly programmed. Availability of large datasets, development of effective algorithms, and access to the powerful computers have resulted in the unprecedented success of machine learning in recent years. This powerful tool has been employed in a plethora of science and engineering domains including mining and minerals industry. Considering the ever-increasing global … Show more

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Cited by 34 publications
(15 citation statements)
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References 91 publications
(229 reference statements)
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“…By analyzing the spectral signatures of different minerals, it is possible to map potential mining sites, estimate mineral abundance, and guide exploration efforts. Methods such as linear discriminant analysis (LDA) and ANNs are used for mineral identification from multispectral images; and SVM is used for mineral exploration, mine planning, and ore extraction from multispectral, RGB, and hyperspectral images (Jooshaki et al, 2021). MSI makes it possible to perform mineral recognition from slurry samples of the ore.…”
Section: Geologymentioning
confidence: 99%
“…By analyzing the spectral signatures of different minerals, it is possible to map potential mining sites, estimate mineral abundance, and guide exploration efforts. Methods such as linear discriminant analysis (LDA) and ANNs are used for mineral identification from multispectral images; and SVM is used for mineral exploration, mine planning, and ore extraction from multispectral, RGB, and hyperspectral images (Jooshaki et al, 2021). MSI makes it possible to perform mineral recognition from slurry samples of the ore.…”
Section: Geologymentioning
confidence: 99%
“…ML is used in mineral processing and also used in mineral processing for prediction and potential difficulties of separation and the identification of minerals 39,40 . For mineral studies, Support vector machine, random forest, and artificial neural networks are frequently used supervised learning algorithms 41 . In the research paper, PSO-ELM used for prediction rockbrust and obtained good result which shows direction for future study in this field 42 .…”
Section: Supervised Learningmentioning
confidence: 99%
“…Machine Learning, a powerful method for analyzing vast amounts of data, has been developed in the past few years to the point where it can be applied to mineral processing applications [41]. The use of more sophisticated instrumentations in conjunction with ML has the potential to revolutionize the standard operating practice in mineral processing.…”
Section: Machine Learningmentioning
confidence: 99%