一种基于自监督学习的地震数据去噪方法

Zhenbin Xia, Dawei Liu, Xiaokai Wang, Zhensheng Shi, Wenchao Chen
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摘要

随机噪声对地震信号分辨率、后续解释和储层预测精度都有不利影响。在实际的地震勘探中,获得干净的标签来训练去噪网络往往是困难和昂贵的。与监督学习相比,自监督学习不需要清晰的标签,而是根据数据本身构建监督信息。本文提出了一种基于自监督学习的地震数据去噪网络,主要包括数据处理模块、编码器、解码器和残差噪声分离模块四个部分。数据处理模块对输入的单个二维地震信号进行伯努利采样,构建监理信息。该编码器由部分卷积、扩展卷积、残差学习块和下采样四部分组成。扩展卷积可以增加接收域,使编码器更好地捕捉有用信号的特征。该解码器由上采样和标准卷积组成,并采用dropout策略。编码器和解码器采用相同高度层之间的跳变连接,实现深层和浅层的特征融合。残差噪声分离模块通过计算实际地震数据与预测有用数据之间的残差得到预测噪声,然后利用噪声先验信息作为正则化约束,避免了训练过程中的过拟合现象。合成地震数据和真实地震数据的实验结果表明,该网络不仅有效地抑制了随机噪声,而且具有较高的保真度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A denoising method of seismic data based on self-supervised learning
Random noise adversely affects seismic signal resolution, subsequent interpretation, and reservoir prediction accuracy. In actual seismic exploration, it is often difficult and costly to obtain clean labels to train a denoising network. Compared with supervised learning, self-supervised learning does not need clean labels, but constructs supervised information according to the data itself. This paper presents a denoising network of seismic data based on self-supervised learning, which mainly includes four parts: data processing module, encoder, decoder, and residual noise separation module. The data processing module performs Bernoulli sampling on the input single 2D seismic signal to construct the supervision information. The encoder consists of four parts: partial convolution, dilated convolution, residual learning block, and down sampling. Dilated convolution can increase receptive fields and make the encoder better capture the features of useful signals. The decoder consists of up-sampling and standard convolution with a dropout strategy. The encoder and decoder use skip connections between the layers of the same height to realize the feature fusion of deep and shallow layers. The residual noise separation module obtains the predicted noise by calculating the residual between actual seismic data and predicted useful data, then uses the noise prior information as the regularization constraint to avoid the phenomenon of overfitting during training. The experimental results of synthetic and real seismic data indicate that our network not only suppresses random noise with effect, but also does have high fidelity.
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