首页|Data Mining of a Geoscience Database Containing Key Features of Gold Deposits and Occurrences in Southwestern Uganda: A Pilot Study

Data Mining of a Geoscience Database Containing Key Features of Gold Deposits and Occurrences in Southwestern Uganda: A Pilot Study

扫码查看
Data mining is a promising new tool in mineral exploration. Here, we combined data-mining procedures with spatial prediction modeling for gold exploration targeting in the Buhweju area in southwestern Uganda. It was employed in a data-rich context of unavoidably partly redundant and correlated information that offered challenges in extracting significant relationships. Our study utilized a database of co-registered digital maps related to gold mineralization. It comprised Landsat TM, Shuttle Radar Topographic Mission (SRTM), and geophysical (radiometric and magnetic) datasets for geological and structural mapping. The locations of 15 orogenic gold deposits and 87 gold occurrences were obtained from the Geological Survey of Uganda database. These were considered direct evidence of the presence of gold mineralization. The geological and geophysical settings at the gold deposit/occurrences locations were based on geological units as host rocks, contacts, and structural elements, together with continuous field values of geophysics, radiometry, and other remotely sensed imagery. A gold exploration targeting proposition (T-p) was defined as: "That a point p within the study area contains a gold deposit given the presence of spatial evidence." All outstanding combinations of spatial evidence were obtained using empirical likelihood ratios. With a data-mining strategy, the ratios were filtered and modeled to identify stronger spatial associations, to rank the study area according to the likelihood of future discoveries, to represent ranking quality, to estimate associated uncertainty, and to select prospective target areas. The empirical likelihood ratios facilitated a transparent strategy for generating prediction patterns and extracting small prospective target areas with higher likelihood of discovery and lower-ranking uncertainty. Conclusions are provided on the knowledge extraction for prospectivity with further data and the challenges of reducing the arbitrariness of decisional steps.

Data miningEmpirical likelihood ratioPrediction patternTarget patternUncertainty patternGold prospectivityUgandaOROGENIC GOLDPROSPECTIVITYEXPLORATIONMINERALIZATIONSYSTEMS

Woldai, Tsehaie、Fabbri, Andrea G.

展开 >

Univ Witwatersrand

Univ Milano Bicocca

2022

Natural resources research

Natural resources research

SCI
ISSN:1520-7439
年,卷(期):2022.31(5)
  • 54