基于深度学习的地震资料地质体解释的形状雕刻方法

S. Petrov, T. Mukerji, Xin Zhang, Xinfei Yan
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引用次数: 0

摘要

地震资料解释是一个耗时且不确定的过程。机器学习工具可以帮助在原始地震数据和感兴趣的储层特征之间建立一条捷径。最近,涉及卷积神经网络的技术开始获得动力。卷积神经网络在图像模式识别方面特别有效,这就是为什么它们适用于地震相分类和解释任务。我们尝试了三种基于卷积层的不同架构,并将它们与不同的合成数据集和现场数据集进行了比较,以获得地震解释结果的质量和计算效率。在我们的研究中使用的架构是三种深度全卷积架构:一个具有完全连接头部的3D卷积网络;2D全卷积网络和U-Net。我们发现在预测阶段执行分类时,U-Net架构既健壮又最快。头部完全连接的三维卷积模型是最慢的,而完全卷积模型的预测是不稳定的。
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Shape carving methods of geologic body interpretation from seismic data based on deep learning
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning tools can help to build a shortcut between raw seismic data and reservoir characteristics of interest. Recently, techniques involving convolutional neural networks have started to gain momentum. Convolutional neural networks are particularly efficient at pattern recognition within images, and this is why they are suitable for seismic facies classification and interpretation tasks. We experimented with three different architectures based on convolutional layers and compared them with different synthetic and field datasets in terms of quality of the seismic interpretation results and computational efficiency. The architectures used in our study were three deep fully convolutional architectures: a 3D convolutional network with a fully connected head; a 2D fully convolutional network, and U-Net. We found the U-Net architecture to be both robust and the fastest when performing classification at the prediction stage. The 3D convolutional model with a fully connected head was the slowest, while a fully convolutional model was unstable in its predictions.
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