Data-driven multi-index overlay gold prospectivity mapping using geophysical and remote sensing datasets
Date
2022
Journal Title
Journal ISSN
Volume Title
Publisher
Journal of African Earth Sciences
Abstract
The comparative relevance of each geospatial component of mineralization differs from one geological terrane to
the other because various sought-after mineral deposit-types synonymously differ in different geological terranes.
Hence, the possibility of employing a conceptual model to obtain a relationship or a quantitative function between
various geospatial features (evidential layers) with respect to the mineral being sought is laudable, though
these features may not necessarily have a generically related effect with the mineral being sought. As a consequence,
there is the need to employ a technique that has the capacity to recognize the efficient and inefficient
geospatial indicators of the mineral deposit-type being sought. In view of this, this study employed the logistic
function, concentration-area fractal model and the prediction-area (P-A) plot to transform and discretize the
continuous value of each evidential layer as well as generating intersection points of prediction rate indicators
that are essential in obtaining the normalized densities, which were subsequently employed in generating the
objective weight for each evidential layer in a data-driven way. The P-A and the normalized density techniques
employed were vital in recognizing the indicator and non-indicator criteria. The results obtained acknowledged
the potassium concentration layer as a non-indicator of gold mineralization within the study area and subsequently
recognized the hydroxyl bearing mineral concentration layer as the most plausible indicator criteria
among the six evidential layers (lineament density, iron concentration, hydroxyl concentration, gravity anomaly,
magnetic anomaly and potassium concentration) employed in this study. These five indicator criteria were integrated
to generate a mineral prospectivity map (MPM) over the study area based on the data-driven multiindex
overlay approach adopted. The prediction rate for each of the 6 evidential layers (5 of which were the
indicator criteria) as well as the MPM produced indicates that, the generation of objective weights in a datadriven
manner via normalized density enhances the predicting ability of the MPM produced in comparison
with the individual evidential layers.
Description
Research Article
Keywords
Data-driven approach, Normalized density, Evidential layer, Prediction-area plots, Logistic function, Multi-index overlay