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Neural network training data selection using memory reduced cluster analysis for field model development

机译:使用内存减少聚类分析的神经网络训练数据选择用于现场模型开发

摘要

A system and method for selecting a training data set from a set of multidimensional geophysical input data samples for training a model to predict target data. The input data may be data sets produced by a pulsed neutron logging tool at multiple depth points in a cases well. Target data may be responses of an open hole logging tool. The input data is divided into clusters. Actual target data from the training well is linked to the clusters. The linked clusters are analyzed for variance, etc. and fuzzy inference is used to select a portion of each cluster to include in a training set. The reduced set is used to train a model, such as an artificial neural network. The trained model may then be used to produce synthetic open hole logs in response to inputs of cased hole log data.
机译:一种用于从一组多维地球物理输入数据样本中选择训练数据集以训练模型以预测目标数据的系统和方法。输入数据可以是在井中多个深度点处由脉冲中子测井仪产生的数据集。目标数据可以是裸眼测井工具的响应。输入数据分为几类。来自训练井的实际目标数据链接到群集。分析链接的群集的方差等,并使用模糊推理选择每个群集的一部分以包括在训练集中。精简集用于训练模型,例如人工神经网络。然后,可以响应于套管井测井数据的输入,将训练后的模型用于生成合成裸眼测井。

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