Geospatial modelling of mineral potential zones using data-driven based weighting factor and statistical index techniques
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Journal of African Earth Sciences
Abstract
Mineral prospectivity models (MPMs) are significantly essential in delineating target zones with the optimum
likelihood of containing a particular sought-after mineral deposit. This present study carried out mineral po tential mapping over the Collette Prospecting Licence (PL) Area of north-western Ghana using bivariate data driven spatial statistical models composed of statistical index (SI) and weighting factor (WF) approaches. In
the first instance, the geographic coordinates of variously known locations of artisanal mining operations as well
as high Au concentration locations were mapped during a field survey. As a result, 181 known locations of Au
occurrences were identified, out of which 127 (70%) were selected randomly for training and creating the
mineral prospectivity models, whereas the remaining 54 (30%) were used to assess and validate the accuracy of
the predictive models produced. The efficacy of mineral prospectivity models generated enormously depends on
the appropriate selection of mineral-related factors. In this study, the following mineral-related condition factors
(evidential layers) comprising analytic signal, lineament density, uranium-thorium ratio, uranium, potassium thorium ratio, potassium, reduction-to-equator, and geology were used. The aforementioned evidential layers
were derived and sourced from geophysical and geological datasets, which were later prepared for the generation
of the models in a geographic information systems (GIS) environment. Finally, the validation of the mineral
prospectivity models generated was carried out by applying the receiver operating characteristics (ROC) curve.
The estimated results based on the ROC plots obtained for the predictive models showed that the area under the
ROC curve (AUC) scores obtained for the SI-based and WF-based mineral prospectivity models were respectively,
0.780 and 0.733. Hence, it can be concluded that both mineral predictive models created in this study produced
reasonably good accuracy (AUC score greater than 0.7) in predicting the potential zones of gold mineralisation
occurrences within the Collette PL Area of north-western Ghana. These MPMs can serve as essential models for
mineral exploration programmes within the study area.
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Research Article