利用信道关注机制进行三维地震去噪和重建的无地面实况深度学习

GEOPHYSICS Pub Date : 2024-07-09 DOI:10.1190/geo2023-0592.1
Yang Cui, Juan Wu, M. Bai, Yangkang Chen
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引用次数: 0

摘要

使用有监督方法的地震去噪方法需要大量高质量的配对训练数据集才能达到令人满意的效果。为网络训练生成标签有两种方法:一种是使用波方程模拟合成数据,另一种是利用通过传统方法获得的去噪数据。然而,与使用大量无噪声数据作为标签相比,使用这些标签会限制网络的噪声衰减性能。在此,我们提出了一种无地面实况的三维(3-D)地震数据处理方法。首先,我们使用三维补丁方案将噪声地震数据划分为许多固定大小的区块,然后将获得的三维补丁平铺以扩大训练集,并从输入噪声数据中捕获更多高阶波形特征。然后,将获得的训练数据集发送到所提出的深度学习(DL)网络中,编码器块压缩特征图以提取波形特征,解码器块重建去噪特征图。值得注意的是,卷积瓶颈关注模块(CBAM)和高效通道关注模块(ECA)被应用于引导网络以较少的网络参数关注信号波动特征。此外,还采用了串联机制,使深度网络能够重用浅层波形特征,减轻训练过程中的过拟合。最后,利用解补方案重建去噪的三维地震数据。数值实验证明,所提出的方法在信噪比(SNR)改善和有用信号保留方面优于基准方法。
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Ground-truth-free Deep Learning for 3-D Seismic Denoising and Reconstruction with Channel Attention Mechanism
Seismic denoising methods using supervised methods rely on a large number of high-quality paired training datasets to reach satisfactory performances. There are two ways to generate labels for network training: one is to simulate the synthetic data using the wave equation, and the other is to utilize denoised data obtained via conventional methods. However, using these labels will limit the networks' noise attenuation performance compared with using large volumes of noise-free data as labels. Here, we propose a ground-truth-free way for three-dimensional (3-D) seismic data processing. First, we use the 3-D patch scheme to divide the noisy seismic data into many fixed-size blocks and then flatten the obtained 3-D patches to expand the training set and capture more higher-order waveform characteristics from the input noisy data. Next, the obtained training dataset is sent into the proposed deep learning (DL) network, where the encoder blocks compress the feature map to extract the waveform features, and the decoder blocks reconstruct the denoised feature map. Notably, the convolutional bottleneck attention module (CBAM) and efficient channel attention (ECA) module are applied to guide the network to focus on signal fluctuation features with fewer network parameters. In addition, the concatenation mechanism is used to enable deep networks to reuse shallow-layer waveform features and mitigate overfitting during training. Finally, the unpatching scheme is used to reconstruct the denoised 3-D seismic data. Numerical experiments demonstrate that the proposed method outperforms benchmark approaches in terms of signal-to-noise ratio (SNR) improvement and useful signal preservation.
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