Knowledge-Driven and Data-Driven Fuzzy Models for Predictive Mineral Potential Mapping (original) (raw)
A Hybrid Fuzzy Weights-of-Evidence Model for Mineral Potential Mapping
Alok Porwal
Nonrenewable Resources, 2006
View PDFchevron_right
Predictive mapping for porphyry copper mineralization: a comparison of knowledge-driven and data-driven fuzzy models in Siahrud area, Azarbaijan province, NW Iran
kaveh p
Applied Geomatics, 2013
View PDFchevron_right
Mineral Prospectivity Mapping by Fuzzy Logic Data Integration, Kajan Area in Central Iran
farshid kiani, Pezhman Rasekh
View PDFchevron_right
Fuzzy logic : Identifying areas for mineral development
Gavin Fleming
2009
View PDFchevron_right
A Hybrid Neuro-Fuzzy Model for Mineral Potential Mapping
Alok Porwal
Mathematical Geology, 2004
View PDFchevron_right
Data-driven fuzzy analysis in quantitative mineral resource assessment
Roussos Dimitrakopoulos
View PDFchevron_right
Fuzzy outranking approach: A knowledge-driven method for mineral prospectivity mapping
Gholam Norouzi
International Journal of Applied Earth Observation and Geoinformation, 2013
View PDFchevron_right
Heavy minerals mapping using Fuzzy method
Dr. S. Kaliraj
View PDFchevron_right
Unsupervised clustering and empirical fuzzy memberships for mineral prospectivity modelling
Ferenc Molnar
Ore Geology Reviews, 2019
View PDFchevron_right
Using fuzzy logic in a Geographic Information System environment to enhance conceptually based prospectivity analysis of Mississippi Valley‐type mineralisation
David Groves
Australian Journal of Earth Sciences, 2000
View PDFchevron_right
Geologically constrained fuzzy mapping of gold mineralization potential, Baguio district, Philippines
John Carranza
2001
View PDFchevron_right
Preparing Mineral Potential Map Using Fuzzy Logic in Gis Environment
M. Saadi Mesgari
View PDFchevron_right
Evaluation of the Performance of Fuzzy Logic Applied in Spatial Analysis for Mineral Prospecting
Gilberto Camara
2000
View PDFchevron_right
MINERAL POTENTIAL PREDICTIVE MODELING USING GIS
Salome Wabuyele Wabuyele
View PDFchevron_right
GIS modeling using fuzzy logic approach in mineral prospecting based on geophysical data
Harman Setyadi
View PDFchevron_right
Data-driven fuzzy analysis in quantitative mineral resource assessment Stochastic Simultaneous Optimization of Mining Complexes - Mineral Value Chains View Data-driven fuzzy analysis in quantitative mineral resource assessment
Xiaochun Luo
View PDFchevron_right
GIS-based weights of evidence modeling applied to mineral prospectivity mapping of Sn-W and rare metals in Laouni area, Central Hoggar, Algeria
Mokrane Kesraoui
Arabian Journal of Geosciences, 2016
View PDFchevron_right
A computational optimizedextended model for mineral potential mapping based on WofE method
Ali Pouyan
Am. J. Applied Sci, 2009
View PDFchevron_right
ELECTRE III: A knowledge-driven method for integration of geophysical data with geological and geochemical data in mineral prospectivity mapping
Gholam Norouzi
Journal of Applied Geophysics, 2012
View PDFchevron_right
A fuzzy-based prognosis of ore mineralization potentials in Ramand region (Qazvin province)
Reza Mehrnia
Journal of Mining and Environment, 2017
View PDFchevron_right
Knowledge-guided data-driven evidential belief modeling of mineral prospectivity in Cabo de Gata, SE Spain
Emmanuel John M. Carranza, M. Van Der Meijde
International Journal of Applied Earth Observation and Geoinformation, 2008
View PDFchevron_right
Data-Driven Index Overlay and Boolean Logic Mineral Prospectivity Modeling in Greenfields Exploration
John Carranza
Natural Resources Research, 2015
View PDFchevron_right
Multi-Dimensional Data Fusion for Mineral Prospectivity Mapping (MPM) Using Fuzzy-AHP Decision-Making Method, Kodegan-Basiran Region, East Iran
Adel Shirazy
Minerals
View PDFchevron_right
Data Integration using Weights of Evidence Model: Applications in Mapping Mineral Resource Potentials
Dr Hongmei Wang
View PDFchevron_right
A Spatial Data-Driven Approach for Mineral Prospectivity Mapping
Chris Folkes
Remote Sensing
View PDFchevron_right
Artificial Neural Networks for Mineral-Potential Mapping: A Case Study from Aravalli Province, Western India
Alok Porwal
Nonrenewable Resources, 2003
View PDFchevron_right
Data-Driven Evidential Belief Modeling of Mineral Potential Using Few Prospects and Evidence with Missing Values
John Carranza
Natural Resources Research, 2014
View PDFchevron_right
GIS-based mineral prospectivity mapping using machine learning methods: A case study from Tongling ore district, eastern China
Leonardo Ruz
Elsevier, 2019
View PDFchevron_right
A predictive GIS model for potential mapping of copper, lead, and zinc in Langping area, China
DR B BENOMAR
Geo-spatial Information Science, 2009
View PDFchevron_right
Validation and sensitivity analysis of a mineral potential model using favourability functions
Tsehaie Woldai
Applied GIS, 2006
View PDFchevron_right
Porphyry copper potential mapping using the weights-of- evidence model in a GIS, northern Shahr-e-Babak, Iran
Majid Tangestani
Australian Journal of Earth Sciences, 2001
View PDFchevron_right
Evidential belief functions for data-driven geologically constrained mapping of gold potential, Baguio district, Philippines
John Carranza
Ore Geology Reviews, 2003
View PDFchevron_right
Fuzzy logic modeling for hydrothermal gold mineralization mapping using geochemical, geological, ASTER imageries and other geo-data, a case study in Central Alborz, Iran
Masoud Moradi
Earth Science Informatics, 2014
View PDFchevron_right
Geochemical mineralization probability index (GMPI): A new approach to generate enhanced stream sediment geochemical evidential map for increasing probability of success in mineral potential mapping
Mahyar Yousefi
Journal of Geochemical Exploration, 2012
View PDFchevron_right
Uncertainty in Mineral Prospectivity Prediction
Kevin Kok Wai Wong
Lecture Notes in Computer Science, 2006
View PDFchevron_right