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Seismic waveform classification based on Kohonen 3D neural networks with RGB visualization

机译:基于Kohonen 3D神经网络的地震波形分类RGB可视化

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摘要

Seismic trace segments in a 3D volume over a reservoir interval are classified into seismic facies units via neural network trace analysis. Unsupervised classification is carried out in two stages: 1) Training, whereby typical (average) objects of each class are estimated and 2) Classification stage whereby all study objects are assigned to a certain class, based on a minimum similarity to a typical object of this class. Input parameters for the algorithm are: the number of classes, the size of the vertical segment, the investigated time window and the colour scheme applied. Unsupervised classification is fairly rapid and several software packages are available for this purpose. In contrast, a supervised workflow is more demanding yet facilitates interpretation of results. In addition, supervised classification and calibration permit probabilistic uncertainty analysis. An example of a non-supervised classification scheme is shown and the main advantages of supervised partitioning are discussed.
机译:通过神经网络轨迹分析将3D体积中的3D体积中的地震迹线段分类为地震相单位。无监督的分类在两个阶段执行:1)训练,由此估计每个类的典型(平均值)对象,并且基于与典型对象的最小相似度将所有研究对象分配给某个类别的分类阶段。这节课。算法的输入参数是:类的数量,垂直段的大小,调查时间窗口和应用的颜色方案。无监督的分类是相当迅速的,有几个软件包可用于此目的。相比之下,监督工作流程更加苛刻,但促进了对结果的解释。此外,监督分类和校准允许概率不确定性分析。讨论了未监督分类方案的示例,并讨论了监督分区的主要优点。

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