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Deep Learning for Prediction of Complex Geology Ahead of Drilling

机译:深度学习,以预测钻井前复杂地质

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During a geosteering operation the well path is intentionally adjusted in response to the new data acquired while drilling. To achieve consistent high-quality decisions, especially when drilling in complex environments, decision support systems can help cope with high volumes of data and interpretation complexities. They can assimilate the real-time measurements into a probabilistic earth model and use the updated model for decision recommendations. Recently, machine learning (ML) techniques have enabled a wide range of methods that redistribute computational cost from on-line to off-line calculations. In this paper, we introduce two ML techniques into the geosteering decision support framework. Firstly, a complex earth model representation is generated using a Generative Adversarial Network (GAN). Secondly, a commercial extra-deep electromagnetic simulator is represented using a Forward Deep Neural Network (FDNN). The numerical experiments demonstrate that the combination of the GAN and the FDNN in an ensemble randomized maximum likelihood data assimilation scheme provides real-time estimates of complex geological uncertainty. This yields reduction of geological uncertainty ahead of the drill-bit from the measurements gathered behind and around the well bore.
机译:在地升操作期间,响应于在钻井时获取的新数据有意调整井路径。为实现一致的高质量决策,特别是在复杂环境中钻井时,决策支持系统可以帮助应对高卷的数据和解释复杂性。它们可以将实时测量分化为概率的地球模型,并使用更新的模型进行决策建议。最近,机器学习(ML)技术使各种方法能够重新分配从在线到离线计算的计算成本。在本文中,我们将两种ML技术引入了地升设备决策支持框架。首先,使用生成的对抗性网络(GaN)产生复杂的地球模型表示。其次,使用前向深度神经网络(FDNN)表示商业超深电磁模拟器。数值实验表明,GaN和FDNN在集合随机化最大似然数据同化方案中的组合提供了复杂地质不确定性的实时估计。从井孔后面和周围的测量结果,这会产生降低地质不确定性的降低。

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