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首页> 外文期刊>Applied radiation and isotopes: including data, instrumentation and methods for use in agriculture, industry and medicine >Self organizing map neural networks approach for lithologic interpretation of nuclear and electrical well logs in basaltic environment, Southern Syria
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Self organizing map neural networks approach for lithologic interpretation of nuclear and electrical well logs in basaltic environment, Southern Syria

机译:南叙利亚玄武岩环境岩性解读岩性解读的自我组织地图神经网络方法

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摘要

An approach based on self organizing map (SOM) artificial neural networks is proposed herewith oriented towards interpreting nuclear and electrical well logging data. The well logging measurements of Kodana well in Southern Syria have been interpreted by applying the proposed approach. Lithological cross-section model of the basaltic environment has been derived and four different kinds of basalt have been consequently distinguished. The four basalts are hard massive basalt, hard basalt, pyroclastic basalt and the alteration basalt products- clay. The results obtained by SOM artificial neural networks are in a good agreement with the previous published results obtained by other different techniques. The SOM approach is practiced successfully in the case study of the Kodana well logging data, and can be therefore recommended as a suitable and effective approach for handling huge well logging data with higher number of variables required for lithological discrimination purposes.
机译:这里提出了一种基于自组织地图(SOM)人工神经网络的方法,以取向解释核和电良好的测井数据。 通过应用提出的方法解释了叙利亚南部柯达纳井的井测量测量。 源于玄武岩环境的岩性横截面模型,并因此区分了四种不同类型的玄武岩。 四个碱基是硬质玄武岩,硬质玄武岩,发球菌玄武岩和改变玄武岩产品 - 粘土。 SOM人工神经网络获得的结果与其他不同技术获得的先前公开的结果一致。 在柯达纳井测井数据的情况下成功实施了SOM方法,因此可以推荐作为处理巨大井测井数据的合适且有效的方法,该数据具有较高数量的岩性辨别目的所需的变量。

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