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Lithology determination from well logs with fuzzy associative memory neural network

机译:基于模糊联想记忆神经网络的测井岩性测定

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摘要

An artificial intelligence technique of fuzzy associative memory is used to determine rock types from well-log signatures. Fuzzy associative memory (FAM) is a hybrid of neural network and fuzzy expert system. This new approach combines the learning ability of neural network and the strengths of fuzzy linguistic modeling to adaptively infer lithologies from well-log signatures based on (1) the relationships between the lithology and log signature that the neural network have learned during the training and/or (2) geologist's knowledge about the rocks. The method is applied to a sequence of the Ordovician rock units in northern Kansas. This paper also compares the performances of two different methods, using the same data set for meaningful comparison. The advantages of FAM are: (1) expert knowledge acquired by geologists is fully utilized; (2) this knowledge is augmented by the neural network learning from the data, when available; and (3) FAM is "transparent" in that the knowledge is explicitly stated in the fuzzy rules.
机译:模糊联想记忆的人工智能技术可用于根据测井特征确定岩石类型。模糊联想记忆(FAM)是神经网络和模糊专家系统的混合体。这种新方法结合了神经网络的学习能力和模糊语言建模的优势,可基于(1)神经网络在训练和/或学习过程中学习到的岩性和测井标志之间的关系,从测井标志中自适应地推断岩性。或(2)地质学家对岩石的了解。该方法适用于堪萨斯州北部的奥陶系岩石单元序列。本文还使用相同的数据集进行了有意义的比较,比较了两种不同方法的性能。 FAM的优点是:(1)充分利用了地质学家获得的专业知识; (2)通过神经网络从数据中学习(如果可用)来增强这种知识; (3)FAM是“透明的”,因为在模糊规则中明确说明了知识。

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