利用定制 U-Net 减小海洋地震干扰噪音

Jing Sun, Sigmund Slang, Thomas Elboth, Thomas Larsen Greiner, Steven McDonald, Leiv-J Gelius
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引用次数: 0

摘要

海洋地震干扰噪声是指在地震勘探过程中记录到来自附近海洋震源船的能量。这种噪声往往在远距离上保存完好,并在记录数据中造成相干伪影。多年来,业界已开发出各种用于消除地震干扰的去噪技术,但尽管性能良好,使用起来仍很耗时。基于机器学习的处理方法是一种可显著提高计算效率的替代方法。在传统图像中,自动编码器经常被用于去噪目的。然而,由于地震数据和噪声的特殊性,自动编码器在地震干扰噪声的情况下失效了。因此,我们建议使用定制的 U-Net 设计,将元素求和作为跳过连接块的一部分,以处理梯度消失问题,并确保高层和低层特征之间的信息融合。为了确保研究的真实性,只使用了地震现场数据,包括 25000 个训练实例。结果发现,定制的 U-Net 性能良好,只留下少量残差,但来自侧面的地震干扰噪声除外。虽然我们定制的 U-Net 在质量上没有超过标准的商业算法,但(经过适当训练后)它可以在大约 0.02 秒内读取并处理单个地震数据。这比任何现有的工业去噪算法都要快得多。此外,所提出的网络以连续的顺序处理镜头采集,与通常需要多镜头输入以打破噪声一致性的行业算法相比,这是一个优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attenuation of marine seismic interference noise employing a customized U-Net
Marine seismic interference noise occurs when energy from nearby marine seismic source vessels is recorded during a seismic survey. Such noise tends to be well preserved over large distances and cause coherent artifacts in the recorded data. Over the years, the industry has developed various denoising techniques for seismic interference removal, but although well performing they are still time-consuming in use. Machine-learning based processing represents an alternative approach, which may significantly improve the computational efficiency. In case of conventional images, autoencoders are frequently employed for denoising purposes. However, due to the special characteristics of seismic data as well as the noise, autoencoders failed in the case of marine seismic interference noise. We therefore propose the use of a customized U-Net design with element-wise summation as part of the skip-connection blocks to handle the vanishing gradient problem and to ensure information fusion between high- and low-level features. To secure a realistic study, only seismic field data were employed, including 25000 training examples. The customized U-Net was found to perform well leaving only minor residuals, except for the case when seismic interference noise comes from the side. We further demonstrate that such noise can be treated by slightly increasing the depth of our network. Although our customized U-Net does not outperform a standard commercial algorithm in quality, it can (after proper training) read and process one single shot gather in approximately 0.02s. This is significantly faster than any existing industry denoising algorithm. In addition, the proposed network processes shot gathers in a sequential order, which is an advantage compared with industry algorithms that typically require a multi-shot input to break the coherency of the noise.
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