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首页> 外文期刊>Journal of Petroleum Science & Engineering >Automatic lithology prediction from well logging using kernel density estimation
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Automatic lithology prediction from well logging using kernel density estimation

机译:利用核密度估计从井测井中自动岩性预测

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摘要

Technologies of real-time data measurement during drilling operation have kept the attention of petroleum industries in the past years, especially with the benefit of real-time formation evaluation through logging-while-drilling technology. It is expected that most of the logging data will be recorded in real-time operation. Hence, application of automated lithology prediction tool will be essential.An automatic method to predict lithology from borehole geophysical data was developed. It was solved as a multivariate classification problem with multidimensional explanatory variables. The learning algorithm combines kernel density estimates and a classification rule that is based on these estimates. The goal of this work is to test the method on a univariate variable and validate the prediction accuracy by calculating the misclassification rates. In addition, the results will be established as a baseline for application in practice and future developments for multivariate variables analysis.Gamma-ray from wireline logging is selected as the variable to describe two lithology groups of shale and not-shale. Data from six wells in the Norwegian Continental Shelf were extracted and examined with aids of explorative data analysis and hypothesis testing, and then divided into a training- and test data set. The selected algorithm processed the training data into models, and later each element of test data was assigned to the models to get the prediction. The results were validated with cutting data, and it was proved that the models predicted the lithology effectively with misclassification rates less than 15% at its lowest and average of±31%. Moreover, the results confirmed that the method has a promising prospect as lithology prediction tool, especially in real-time operation, because the non-parametric approach allows real-time modeling with fewer data assumptions required.
机译:钻井操作期间的实时数据测量技术在过去几年中保持了石油行业的关注,特别是通过钻井技术进行实时形成评估。预计大多数记录数据将在实时操作中记录。因此,开发了自动岩性预测工具的应用。开发了自动方法以预测来自钻孔地球物理数据的岩性。它被解决为具有多维解释变量的多变量分类问题。学习算法组合了基于这些估计的核密度估计和分类规则。这项工作的目标是通过计算错误分类率来测试单变量变量上的方法并验证预测准确性。此外,结果将建立作为在实践中应用的基准,以及多元变量分析的未来发展。从有线记录中选择了Gama射线作为变量,以描述页岩和非页岩的两个岩性组。提取挪威大陆架中六个井的数据,并借助探索性数据分析和假设检测检查,然后分为培训和测试数据集。所选算法将训练数据处理成模型,稍后将每个测试数据元素分配给模型以获取预测。结果用切割数据验证,并证明了模型在最低和平均值的比例下,在比较低于15%和平均值的错误分类速率下降。此外,结果证实,该方法具有希望的前景作为岩性预测工具,特别是在实时操作中,因为非参数方法允许具有较少所需的数据假设的实时建模。

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