Semi-Supervised Deep-Learning Applied To UK North Sea Well And Seismic Data

Y. Nishitsuji, R. Exley, J. Nasseri
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Abstract

Semi-supervised deep-learning architectures provide a multi-layer, pattern recognition, approach that is powerful and ideally suited to the data rich environment that exists at the heart of the oil and gas industry. In this study we apply this technology in order to classify facies using elastic impedances from UK North Sea well and seismic data. The semi-supervised deep-learning method in this study uses a self-training strategy that combines both labelled and unlabelled data during the training phase so that classified data subsequently becomes part of the training dataset in the next iteration. This approach is ideal when the availability of labelled data is limited by practical constraints, which is often the case in subsurface geoscience. The resulting outputs of classified facies were visualised using elastic impedance cross-plots after application to a single training well from a North Sea oil discovery. To validate the result we upscaled the classification model to equivalent seismic data in order to compare the learning from the training well with two blind wells. The results indicate that semi-supervised deep-learning has the potential to accurately determine facies, including hydrocarbon distributions, in subsurface data at a field scale.
半监督深度学习在英国北海油井和地震数据中的应用
半监督深度学习架构提供了一种强大的多层模式识别方法,非常适合石油和天然气行业核心的数据丰富环境。在这项研究中,我们利用英国北海油井和地震数据的弹性阻抗来对相进行分类。本研究中的半监督深度学习方法使用一种自训练策略,在训练阶段将标记和未标记数据结合在一起,以便分类数据随后在下一次迭代中成为训练数据集的一部分。当标记数据的可用性受到实际限制时,这种方法是理想的,这在地下地球科学中经常出现。该方法应用于北海某油田的单口训练井后,利用弹性阻抗交叉图对分类相的输出结果进行了可视化。为了验证结果,我们将分类模型扩展到等效地震数据,以便将训练井的学习结果与两个盲井的学习结果进行比较。结果表明,半监督深度学习有可能在油田规模的地下数据中准确确定相,包括油气分布。
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