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Mineral Prospectivity Mapping Method Integrating Multi-Sources Geology Spatial Data Sets and Case-Based Reasoning

机译:集成多源地质空间数据集和基于案例的推理的矿物远景映射方法

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Extracting and synthesizing information from existing and massive amounts of geology spatial data sets is of great scientific significance and has considerable value in its applications. To make mineral exploration less expensive, more efficient, and more accurate, it is important to move beyond traditional concepts and establish a rapid, efficient, and intelligent method of predicting the existence and location of minerals. This paper describes a case-based reasoning (CBR) method for mineral prospectivity mapping that takes spatial features of geology data into account and offers an intelligent approach. This method include a metallogenic case representation that combines spatial and attribute features, metallogenic case-based storage organization, and a metallogenic case similarity retrieval model. The experiments were performed in the eastern Kunlun Mountains, China using CBR and weights-of-evidence (WOE), respectively. The results show that the prediction accuracy of the CBR is higher than that of the WOE.
机译:从现有和大量的地质空间数据集中提取和综合信息具有重要的科学意义,并在其应用中具有相当的价值。为了降低矿物勘探的成本,提高效率和准确性,重要的是超越传统概念,并建立一种快速,高效和智能的方法来预测矿物的存在和位置。本文介绍了一种基于案例的推理(CBR)方法来进行矿物前瞻性制图,该方法考虑了地质数据的空间特征并提供了一种智能方法。该方法包括结合了空间和属性特征的成矿案例表示,基于成矿案例的存储组织以及成矿案例相似性检索模型。实验分别在中国昆仑山东部使用CBR和证据权重(WOE)进行。结果表明,CBR的预测精度高于WOE。

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