自相似卷积神经网络在沙漠环境中的地震噪声抑制

IF 0.5 4区 地球科学 Q4 GEOCHEMISTRY & GEOPHYSICS
Hongbo Lin, Xinyu Xu, Shigang Wang
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引用次数: 0

摘要

地震信号在采集过程中不可避免地会受到随机噪声的干扰,从而大大降低了地震数据的质量。为了提高地震数据的质量,我们提出了一种用于地震数据去噪的自相似性卷积神经网络(SS-Net),将地震事件的相干性引入卷积神经网络(CNN)。SS-Net 由两个模块组成,即方向匹配模块(DMM)和去噪模块。方向匹配模块通过计算具有相同方向特征的地震数据块之间的相似性,将相似的地震数据块堆叠生成三维(3D)组。对于具有冗余结构信息的三维组,接下来的去噪模块利用多道卷积自适应地提取和挤压每个三维组的结构特征,从而增强地震信号的特征,避免因地震信号的局部相似性和随机噪声造成的混淆。此外,SS-Net 还采用了跳接技术,将稀疏特征传输到后续的去噪过程中,减少了多通道卷积层提取的信号特征因网络深度增加而造成的损失。我们在合成和野外沙漠地震数据上验证了 SS-Net 的去噪性能。滤波结果证实,SS-Net 能更彻底地抑制地震随机噪声,与其他同类去噪方法相比,能更好地恢复形态复杂的地震事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-similarity convolution neural network for seismic noise suppression in desert environment

Seismic signals are inevitably disturbed by random noise in the acquisition process, which greatly degrades seismic data. In order to improve the quality of seismic data, we propose a self-similarity convolutional neural network (SS-Net) for seismic data denoising by introducing the coherence of seismic events into convolutional neural network (CNN). The SS-Net consists of two modules, the directional matching module (DMM) and the denoising module. The DMM stacks similar seismic data blocks to generate three-dimensional (3D) groups by calculating the similarity between seismic data blocks with the same directional characteristics. For the 3D groups with redundant structural information, the following denoising module with the multi-channel convolution adaptively extracts and squeezes the structural feature characteristic of each 3D group, which enhances the characteristics of seismic signals and avoids confusion caused by local similarity of seismic signals and random noise. In addition, the skip connection is adopted by SS-Net to transport the sparse feature to the following denoising process, to reduce the loss of signal features extracted by multi-channel convolutional layers due to increased network depth. We validate the denoising performance of the SS-Net on the synthetic and field desert seismic data. The filtered results confirm that the SS-Net can suppress seismic random noise more thoroughly and recover the seismic events with complex morphology better than the competitive denoising methods.

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来源期刊
Studia Geophysica et Geodaetica
Studia Geophysica et Geodaetica 地学-地球化学与地球物理
CiteScore
1.90
自引率
0.00%
发文量
8
审稿时长
6-12 weeks
期刊介绍: Studia geophysica et geodaetica is an international journal covering all aspects of geophysics, meteorology and climatology, and of geodesy. Published by the Institute of Geophysics of the Academy of Sciences of the Czech Republic, it has a long tradition, being published quarterly since 1956. Studia publishes theoretical and methodological contributions, which are of interest for academia as well as industry. The journal offers fast publication of contributions in regular as well as topical issues.
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