Knowledge-Driven and Data-Driven Fuzzy Models for Predictive Mineral Potential Mapping

被引:12
|
作者
Alok Porwal
E. J. M. Carranza
M. Hale
机构
[1] International Institute for Geo-information Science and Earth Observation (ITC),Department of Mines and Geology
[2] Govt. of Rajasthan,undefined
[3] Delft University of Technology,undefined
关键词
Mineral potential mapping; fuzzy set; data-driven and knowledge-driven models; fuzzy membership functions; inference engine; defuzzification;
D O I
10.1023/A:1022693220894
中图分类号
学科分类号
摘要
In this paper, we describe new fuzzy models for predictive mineral potential mapping: (1) a knowledge-driven fuzzy model that uses a logistic membership function for deriving fuzzy membership values of input evidential maps and (2) a data-driven model, which uses a piecewise linear function based on quantified spatial associations between a set of evidential evidence features and a set of known mineral deposits for deriving fuzzy membership values of input evidential maps. We also describe a graphical defuzzification procedure for the interpretation of output fuzzy favorability maps. The models are demonstrated for mapping base metal deposit potential in an area in the south-central part of the Aravalli metallogenic province in the state of Rajasthan, western India. The data-driven and knowledge-driven models described in this paper predict potentially mineralized zones, which occupy less than 10% of the study area and contain at least 83% of the “model” and “validation” base metal deposits. A cross-validation of the favorability map derived from using one of the models with the favorability map derived from using the other model indicates a remarkable similarity in their results. Both models therefore are useful for predicting favorable zones to guide further exploration work.
引用
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页码:1 / 25
页数:24
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