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HEBF strategy: a hybrid evidential belief function in geospatial data analysis for mineral potential mapping.

Authors :
Mohammadpour, Mahyadin
Bahroudi, Abbas
Abedi, Maysam
Source :
International Journal of Mining & Geo-Engineering; Mar2023, Vol. 57 Issue 1, p11-25, 15p
Publication Year :
2023

Abstract

In integrating geospatial datasets for mineral potential mapping (MPM), the uncertainty model of MPM can be inferred from the Dempster - Shafer rules of combination. In addition to generating the uncertainty model, evidential belief functions (EBFs) present the belief, plausibility, and disbelief of MPM, whereby four models can be simultaneously utilized to facilitate the interpretation of mineral favourability output. To investigate the functionality and applicability of the EBFs, we selected the Naysian porphyry copper district located on the Urmia - Dokhtar magmatic belt in the northeast of Isfahan city, central Iran. Multidisciplinary datasets-that are geochemical and geophysical data, ASTER satellite images, Quickbird, and ground survey-were designed in a geospatial database to run MPM. Implementing the Dempster law through the intersection (And) and union (OR) operators led to different MPM performances. To amplify the accuracy of the generated favourability maps, a combinatory EBFs technique was applied in three ways: (1) just OR operator, (2) just And operator, and (3) combination of And and OR operators. The plausibility map (as mineral favourability map) was compared to Cu productivity values derived from drilled boreholes, where the MPM accuracy of the hybrid method was higher than each operator. Of note, the success rate of the hybrid method validated by 21 boreholes was about 84%, and it demarcates high favourability zones occupying 0.67 km² of the studied area. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
23456930
Volume :
57
Issue :
1
Database :
Complementary Index
Journal :
International Journal of Mining & Geo-Engineering
Publication Type :
Academic Journal
Accession number :
163068218
Full Text :
https://doi.org/10.22059/IJMGE.2022.340488.594957