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Publication Details
AFRICAN RESEARCH NEXUS
SHINING A SPOTLIGHT ON AFRICAN RESEARCH
environmental science
Data-Driven Index Overlay and Boolean Logic Mineral Prospectivity Modeling in Greenfields Exploration
Natural Resources Research, Volume 25, No. 1, Year 2016
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Description
Index overlay and Boolean logic are two techniques customarily applied for knowledge-driven modeling of prospectivity for mineral deposits, whereby weights of values in evidential maps and weights of every evidence map are assigned based on expert opinion. In the Boolean logic technique for mineral prospectivity modeling (MPM), threshold evidential values for creating binary maps are defined based on expert opinion as well. This practice of assigning weights based on expert opinion involves trial-and-error and introduces bias in evaluating relative importance of both evidential values and individual evidential maps. In this paper, we propose a data-driven index overlay MPM technique whereby weights of individual evidential maps are derived from data. We also propose a data-driven Boolean logic MPM technique, whereby thresholds for creating binary maps are defined based on data. For assigning weights and defining thresholds in these proposed data-driven MPM techniques, we applied a prediction-area plot from which we can estimate the predictive ability of each evidential map with respect to known mineral occurrences, and we use that predictive ability estimate to assign weights to evidential map and to select thresholds for generating binary predictor maps. To demonstrate these procedures, we applied them to an area in the Kerman province in southeast Iran as a MPM case study for porphyry-Cu deposits. © 2014, International Association for Mathematical Geosciences.
Authors & Co-Authors
Yousefi, Mahyar
Iran, Malayer
Malayer University
Carranza, Emmanuel John M.
Australia, Townsville
James Cook University
Statistics
Citations: 128
Authors: 2
Affiliations: 2
Identifiers
Doi:
10.1007/s11053-014-9261-9
ISSN:
15207439
Study Design
Case Study
Study Approach
Qualitative