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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Seismic trace interpolation for irregularly spatial sampled data using convolutional autoencoder
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Seismic trace interpolation for irregularly spatial sampled data using convolutional autoencoder

机译:使用卷积自动化器的不规则空间采样数据的地震轨迹插值

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Seismic trace interpolation is an important technique because irregular or insufficient sampling data along the spatial direction may lead to inevitable errors in multiple suppression, imaging, and inversion. Many interpolation methods have been studied for irregularly sampled data. Inspired by the working idea of the autoencoder and convolutional neural network, we have performed seismic trace interpolation by using the convolutional autoencoder (CAE). The irregularly sampled data are taken as corrupted data. By using a training data set including pairs of the corrupted and complete data, CAE can automatically learn to extract features from the corrupted data and reconstruct the complete data from the extracted features. It can avoid some assumptions in the traditional trace interpolation method such as the linearity of events, low-rankness, or sparsity. In addition, once the CAE network training is completed, the corrupted seismic data can be interpolated immediately with very low computational cost. A CAE network composed of three convolutional layers and three deconvolutional layers is designed to explore the capabilities of CAE-based seismic trace interpolation for an irregularly sampled data set. To solve the problem of rare complete shot gathers in field data applications, the trained network on synthetic data is used as an initialization of the network training on field data, called the transfer learning strategy. Experiments on synthetic and field data sets indicate the validity and flexibility of the trained CAE. Compared with the curvelet-transform-based method, CAE can lead to comparable or better interpolation performances efficiently. The transfer learning strategy enhances the training efficiency on field data and improves the interpolation performance of CAE with limited training data.
机译:地震迹线插值是一种重要的技术,因为沿空间方向的不规则或不足的采样数据可能导致多种抑制,成像和反转中的不可避免的误差。已经研究了许多插值方法以用于不规则采样数据。灵感来自AutoEncoder和卷积神经网络的工作理念,我们通过使用卷积AutoEncoder(CAE)进行地震轨迹插值。不规则采样的数据被视为损坏的数据。通过使用包括损坏和完整数据对的训练数据集,CAE可以自动学习从损坏的数据中提取特征,并从提取的功能重建完整的数据。它可以避免传统的迹线插值方法中的一些假设,例如事件的线性,低秩或稀疏性。另外,一旦CAE网络训练完成,损坏的地震数据可以立即以非常低的计算成本立即内插。由三个卷积层和三个去卷积层组成的CAE网络旨在探索不规则采样数据集的CAE的地震轨迹插值的能力。为了解决现场数据应用中罕见完整拍摄的问题,培训的合成数据网络被用作现场数据的网络训练的初始化,称为转移学习策略。合成和现场数据集的实验表明训练有素的CAE的有效性和灵活性。与基于曲线变换的方法相比,CAE可以有效地导致可比或更好的插值性能。转移学习策略提高了现场数据的培训效率,并提高了CAE与有限训练数据的插值性能。

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