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Inferring the lithology of borehole rocks by applying neural network classifiers to downhole logs: an example from the Ocean Drilling Program

机译:通过将神经网络分类器应用于井下测井资料来推断钻孔岩石的岩性:以海洋钻井计划为例

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摘要

In boreholes with partial or no core recovery, interpretations of lithology in the remainder of the hole are routinely attempted using data from downhole geophysical sensors. We present a practical neural net-based technique that greatly enhances lithological interpretation in holes with partial core recovery by using downhole data to train classifiers to give a global classification scheme for those parts of the borehole for which no core was retrieved. We describe the system and its underlying methods of data exploration, selection and classification, and present a typical example of the system in use. Although the technique is equally applicable to oil industry boreholes, we apply it here to an Ocean Drilling Program (ODP) borehole (Hole 792E, Izu-Bonin forearc, a mixture of volcaniclastic sandstones, conglomerates and claystones). The quantitative benefits of quality-control measures and different subsampling strategies are shown. Direct comparisons between a number of discriminant analysis methods and the use of neural networks with back-propagation of error are presented. The neural networks perform better than the discriminant analysis techniques both in terms of performance rates with test data sets (2–3 per cent better) and in qualitative correlation with non-depth-matched core. We illustrate with the Hole 792E data how vital it is to have a system that permits the number and membership of training classes to be changed as analysis proceeds. The initial classification for Hole 792E evolved from a five-class to a three-class and then to a four-class scheme with resultant classification performance rates for the back-propagation neural network method of 83, 84 and 93 per cent respectively.
机译:在部分或没有岩心恢复的井眼中,通常使用井下地球物理传感器的数据尝试解释井眼其余部分的岩性。我们提出了一种实用的基于神经网络的技术,该技术可以通过使用井下数据训练分类器来大大提高部分岩心的井眼中的岩性解释,从而为没有岩心的井眼部分提供全局分类方案。我们描述了该系统及其数据探索,选择和分类的基础方法,并给出了该系统正在使用的典型示例。尽管该技术同样适用于石油工业井眼,但我们在这里将其应用于海洋钻探计划(ODP)井眼(Hole 792E,Izu-Bonin前臂,火山碎屑砂岩,砾岩和粘土岩的混合物)。显示了质量控制措施和不同子采样策略的量化收益。提出了许多判别分析方法与使用误差反向传播的神经网络之间的直接比较。与测试数据集相比,神经网络的性能要优于判别分析技术(提高2-3%),并且与非深度匹配的岩心在质量上也相关。我们用Hole 792E数据说明了一个允许随着分析的进行而改变培训课程的数量和成员资格的系统至关重要。 Hole 792E的初始分类从五级演变为三级,然后发展为四级方案,反向传播神经网络方法的分类性能分别为83%,84%和93%。

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