Addressing Geological Challenges in Mineral Resource Estimation: A Comparative Study of Deep Learning and Traditional Techniques

Author:

Battalgazy Nurassyl1,Valenta Rick2,Gow Paul1,Spier Carlos3ORCID,Forbes Gordon4ORCID

Affiliation:

1. W.H. Bryan Mining & Geology Research Centre, Sustainable Minerals Institute, The University of Queensland, Brisbane, QLD 4072, Australia

2. Sustainable Minerals Institute, The University of Queensland, Brisbane, QLD 4072, Australia

3. School of Earth and Environmental Sciences, The University of Queensland, Brisbane, QLD 4072, Australia

4. Julius Kruttschnitt Mineral Research Centre, Sustainable Minerals Institute, The University of Queensland, Brisbane, QLD 4072, Australia

Abstract

Spatial prediction of orebody characteristics can often be challenging given the commonly complex geological structure of mineral deposits. For example, a high nugget effect can strongly impact variogram modelling. Geological complexity can be caused by the presence of structural geological discontinuities combined with numerous lithotypes, which may lead to underperformance of grade estimation with traditional kriging. Deep learning algorithms can be a practical alternative in addressing these issues since, in the neural network, calculation of experimental variograms is not necessary and nonlinearity can be captured globally by learning the underlying interrelationships present in the dataset. Five different methods are used to estimate an unsampled 2D dataset. The methods include the machine learning techniques Support Vector Regression (SVR) and Multi-Layer Perceptron (MLP) neural network; the conventional geostatistical methods Simple Kriging (SK) and Nearest Neighbourhood (NN); and a deep learning technique, Convolutional Neural Network (CNN). A comparison of geologic features such as discontinuities, faults, and domain boundaries present in the results from the different methods shows that the CNN technique leads in terms of capturing the inherent geological characteristics of given data and possesses high potential to outperform other techniques for various datasets. The CNN model learns from training images and captures important features of each training image based on thousands of calculations and analyses and has good ability to define the borders of domains and to construct its discontinuities.

Funder

WH Bryan Mining and Geology Research Centre of the Sustainable Minerals Institute, The University of Queensland

Publisher

MDPI AG

Subject

Geology,Geotechnical Engineering and Engineering Geology

Reference77 articles.

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3. Uncertainty assessment of spatial domain models in early stage mining projects—A review;McManus;Ore Geol. Rev.,2021

4. Rossi, M.E., and Deutsch, C.V. (2013). Mineral Resource Estimation, Springer Science & Business Media.

5. Goovaerts, P. (1997). Geostatistics for Natural Resources Evaluation, Oxford University Press on Demand.

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