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Lithotype Clustering in Multidimentional Space

机译:多维空间中的碎片型聚类

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The focus of this work is lithotype clustering using Artificial Neural Network (ANN) for carbonate reservoirs. In contrast to terrigenous deposits, the carbonates are characterized by many parameters. It is quite a difficult problem to resolve carbonates into different lithotypes based on well data In this work we used various data of real carbonate reservoir: well logs, core samples, petrophysical researches To classify the carbonates several characteristics were picked out: class of carbonate (dolomites, limestone, etc.), biota, structure, recrystallization, leaching, incorporation, secondary mineral formation, type of collector, capacity. It is known that many types of data bear the curse of dimensionality. This can be mitigated by using Principal Component Analysis (PCA). PCA enables to determine the significant and uncorrelated variables. Then, the hypothesis of lithotypes discriminability on the multidimensional cross-plot should be confirmed. Finally, ANN for each characteristic was built. Laboratory results of htotype interpretation were used as training and testing data. Input neuron layer was formed by PCA output variables. Output neuron layer consisted of values of given characteristic. Lithotypes were determined by obtained characteristics and compared with laboratory results. Developed lithotype clusterization technique was successfully applied for real carbonate reservoirs.
机译:这项工作的重点是使用人工神经网络(ANN)用于碳酸盐储层的碎石型聚类。与人沉积物相比,碳酸盐的特征在于许多参数。将碳酸盐分解为基于井数据的井数据是一个很难的问题,我们使用了真正的碳酸盐储层的各种数据:井的日志,核心样本,分类碳酸碳酸酯的岩石物理研究是挑选出来的几种特征:碳酸类(白云岩,石灰石等),Biota,结构,重结晶,浸出,掺入,二次矿物质形成,收集器类型,容量。众所周知,许多类型的数据承担了维度的诅咒。这可以通过使用主成分分析(PCA)来缓解。 PCA启用可确定显着和不相关的变量。然后,应该确认多维交叉图上的碎石型差异性的假设。最后,建造了每个特征的Ann。将HOTTYPE解释的实验室结果用作培训和测试数据。输入神经元层由PCA输出变量形成。输出神经元层由给定特征的值组成。通过获得的特征和与实验室结果进行比较来确定碎片型。已开发的碎石型集群化技术已成功应用真正的碳酸盐储层。

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