Omnibus Weights of Evidence Method Implemented in GeoDAS GIS for Information Extraction and Integration

Zhang Shengyuan , Cheng Qiuming , Chen Zhijun
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引用次数: 3

Abstract

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 WofE 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 WofE 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 validated using a case study of mineral potential prediction in Gejiu mineral district, Yunnan, China.

用于信息提取和集成的GeoDAS GIS证据综合权重方法
证据权重(WofE)是一种人工智能方法,用于整合来自不同来源的信息,以实现支持决策的预测目的。该方法通常用于通过集成点训练层和二元或三元证据层(不太常用的多类证据)来预测点事件。证据的综合权重集成了模糊训练层和不同的证据层。与普通的WofE方法相比,该方法提供了新的特性。该方法已在地理信息系统地球物理数据分析系统中实现,该方法包括以下内容:(1)证据的对偶模糊权重(DFWofE),其中训练层和证据层可以被视为模糊集。DFWofE不仅可以用于预测点事件,还可以用于预测区域或线事件。在该模型中,可以使用模糊隶属函数基于点、线和区域来定义模糊训练层;(2)通过建立勘探程度图,实现了WofE的勘探程度模型。该方法可用于评估勘探程度和潜在证据层之间可能的空间相关性。重要的是,如果将勘探程度图与预测此类资源最有可能出现在哪里的其他模型相结合,也将有可能估计未发现的资源。以云南个旧矿区为例,对这些方法和相关系统进行了验证。
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