4.5 Article

Supervised mineral exploration targeting and the challenges with the selection of deposit and non-deposit sites thereof

Journal

APPLIED GEOCHEMISTRY
Volume 128, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.apgeochem.2021.104940

Keywords

Supervised algorithms; Training sites; Known deposit locations; Non-deposit locations; Balancing; Mineral exploration targeting

Funding

  1. School of Mining Engineering, University of Tehran

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The study investigated the impact of changing the number of non-deposit sites on exploration targeting models and emphasized the importance of balancing the number of deposit and non-deposit sites for creating more reliable exploration targets.
Selection of non-deposit sites is a challenging issue affecting the application of supervised algorithms for modeling mineral exploration targets. For this, equal number of deposit and non-deposit sites has been widely applied for training purposes. In this paper, we investigated the effect of changes in the number of non-deposit sites on the effectiveness of exploration targeting models while the number of deposit sites is constant. The results obtained demonstrated that exploration targeting models are affected by the ratio of non-deposit and deposit sites. Thus, balancing between the number of deposit and non-deposit sites is an efficient way to produce more-reliable exploration targets when supervised algorithms are applied for modeling. The idea of this research came from the fact that mineralization is a rare event, and therefore, in a region of interest number of nondeposit sites is much more than that of deposit events. To illustrate the procedure proposed, we used an exploration dataset of porphyry Cu mineralization in Chahargonbad area, SE Iran. A sequence application of selforganizing map and multilayer perceptron neural network algorithm was applied to better illustration of the changing effects of the number of non-deposit sites on the ensuing exploration targeting models.

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