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Omnibus Weights of Evidence Method Implemented in GeoDAS GIS for Information Extraction and Integration 被引量:1

Omnibus Weights of Evidence Method Implemented in GeoDAS GIS for Information Extraction and Integration
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摘要 Weights of evidence (WofE) is an artificial intelligent method for integration of information from diverse sources for predictive purpose in supporting decision making. This method has been commonly used to predict point events by integrating point training layer and binary or ternary evidential layers (multiclass evidence less commonly used). Omnibus weights of evidence integrates fuzzy training layer and diverse evidential layers. This method provides new features in comparison with the ordinary Wore method. This new method has been implemented in a geographic information system-geophysical data analysis system and the method includes the following contents: (1) dual fuzzy weights of evidence (DFWofE), in which training layer and evidential layers can be treated as fuzzy sets. DFWofE can be used to predict not only point events but also area or line events. In this model a fuzzy training layer can be defined based on point, line, and areas using fuzzy membership function; and (2) degree-of-exploration model for WorE is implemented through building a degree of exploration map. This method can be used to assess possible spatial correlations between the degree of exploration and potential evidential layers. Importantly, it would also make it possible to estimate undiscovered resources, if the degree of exploration map is combined with other models that predict where such resources are most likely to occur. These methods and relevant systems were vafidated using a case study of mineral potential prediction in Gejiu (个旧) mineral district, Yunnan ( 云南), China. Weights of evidence (WofE) is an artificial intelligent method for integration of information from diverse sources for predictive purpose in supporting decision making. This method has been commonly used to predict point events by integrating point training layer and binary or ternary evidential layers (multiclass evidence less commonly used). Omnibus weights of evidence integrates fuzzy training layer and diverse evidential layers. This method provides new features in comparison with the ordinary Wore method. This new method has been implemented in a geographic information system-geophysical data analysis system and the method includes the following contents: (1) dual fuzzy weights of evidence (DFWofE), in which training layer and evidential layers can be treated as fuzzy sets. DFWofE can be used to predict not only point events but also area or line events. In this model a fuzzy training layer can be defined based on point, line, and areas using fuzzy membership function; and (2) degree-of-exploration model for WorE is implemented through building a degree of exploration map. This method can be used to assess possible spatial correlations between the degree of exploration and potential evidential layers. Importantly, it would also make it possible to estimate undiscovered resources, if the degree of exploration map is combined with other models that predict where such resources are most likely to occur. These methods and relevant systems were vafidated using a case study of mineral potential prediction in Gejiu (个旧) mineral district, Yunnan ( 云南), China.
出处 《Journal of China University of Geosciences》 SCIE CSCD 2008年第4期404-409,共6页 中国地质大学学报(英文版)
基金 supported by the National Natural Science Foundation of China (No. 40638041) National Key Technology R&D Program (No. 2006BAB01A01) Project of China Geological Survey (No. 1212010633910) the National High Technology Research and Development Program of China (Nos. 2006AA06Z115, 2006AA06Z113) State Key Laboratory of Geological Processes and Mineral Resources (No. GPMR2007-12)
关键词 weights of evidence fuzzy set degree of exploration GIS GeoDAS weights of evidence, fuzzy set, degree of exploration, GIS, GeoDAS
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参考文献12

  • 1Mark F. Coolbaugh,Gary L. Raines,Richard E. Zehner.Assessment of Exploration Bias in Data-Driven Predictive Models and the Estimation of Undiscovered Resources[J].Natural Resources Research.2007(2) 被引量:1
  • 2Qiuming Cheng,F. P. Agterberg.Fuzzy Weights of Evidence Method and Its Application in Mineral Potential Mapping[J].Natural Resources Research.1999(1) 被引量:1
  • 3Kemp, L. D.,Bonham-Carter, G. F.,Raines, G. L., et al.Arc-SDM: ArcView Extension for Spatial Data Modeling Using Weights of Evidence, Logistic Regression, Fuzzy Logic and Neural Network Analysis. http://ntserv.gis.nrcan. gc.ca/sdm/ . 2001 被引量:1
  • 4Yu, C,Tang, Y,Shi, P. et al.The Dynamic System of 665 Endogenic Ore Formation in Gejiu Tin-Polymetallic Ore Region, Yunnan Province[]..1988 被引量:1
  • 5Agterberg, F. P,Bonham-Carter, G. F,Wright, D. F.Statistical Pattern Integration for Mineral Exploration[].Computer Applications in Resource Estimation Prediction and Assessment of Metals and Petroleum Computers and Geology.1990 被引量:1
  • 6Ali, K,Cheng, Q,Chen, Z.Multifractal Power Spectrum and Singularity Analysis for Modeling Stream Sediment Geochemical Distribution Patterns to Identify Anomalies Related to Gold Mineralization in Yunnan Province, South China[].Geochemistry: Exploration Environment Analysis.2007 被引量:1
  • 7Bonham-Carter,G. F.Geographic Information Systems for Geoscientists: Modeling with GIS[].Computer Methods in the Geosciences.1994 被引量:1
  • 8Cheng, Q,Zhang, S. Y.Fuzzy Weights of Evidence Method Implemented in GeoDAS GIS for Information Extraction and Integration for Prediction of Point Events[].Int Geosciences and Remote Sensing Symposium.2002 被引量:1
  • 9Coolbaugh, M. F,Raines, G. L,Zehner, R. E.Assessment of Exploration Bias in Data-Driven Predictive Models and the Estimation of Undiscovered Resources[].Natural Resources Forum.2007 被引量:1
  • 10Bonham-Carter,G.F.,Agterberg,F.P.,Wright,D.F.Integration of geological datasets for gold exploration in Nova Scotia[].Photogrammetric Engineering and Remote Sensing.1988 被引量:1

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