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首页> 外文期刊>Acta Geophysica >Desert seismic noise suppression based on multimodal residual convolutional neural network
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Desert seismic noise suppression based on multimodal residual convolutional neural network

机译:基于多峰剩余卷积神经网络的沙漠地震噪声抑制

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Seismic exploration is an important means of oil and gas detection, but affected by complex surface and near-surface conditions, and the seismic records are polluted by noise seriously. Particularly in the desert areas, due to the influence of wind and human activities, the complex desert noise with low-frequency, nonstationary and non-Gaussian characteristics is produced. It is difficult to extract effective signals from strong noise using existing denoising methods. To address this issue, the paper proposes a new denoising method, called multimodal residual convolutional neural network (MRCNN). MRCNN combines convolutional neural network (CNN) with variational modal decomposition (VMD) and adopts residual learning method to suppress desert noise. Since CNN-based denoisers can extract data features based on massive training set, the impact of noise types and intensity on the denoised results can be ignored. In addition, VMD algorithm can sparsely decompose signal, which will facilitate the feature extraction of CNN. Therefore, using VMD algorithm to optimize the input data will conducive to the performance of the network denoising. Moreover, MRCNN adopts reversible downsampling operator to improve running speed, achieving a good trade-off between denoising results and efficiency. Extensive experiments on synthetic and real noisy records are conducted to evaluate MRCNN in comparison with existing denoisers. The extensive experiments demonstrate that the MRCNN can exhibit good effectiveness in seismic denoising tasks.
机译:地震勘探是石油和天然气检测的重要手段,但受复杂的表面和近表面条件影响,并且地震记录严重噪音受到严重污染。特别是在沙漠地区,由于风和人类活动的影响,产生了低频,非平稳和非高斯特征的复杂沙漠噪声。使用现有的去噪方法难以从强噪声中提取有效信号。为了解决这个问题,本文提出了一种新的去噪方法,称为多模级残留卷积神经网络(MRCNN)。 MRCNN将卷积神经网络(CNN)与变分模态分解(VMD)结合起来,采用残余学习方法来抑制沙漠噪声。由于基于CNN的脱氮机可以基于大量训练集提取数据特征,因此可以忽略噪声类型和强度对去噪结果的影响。此外,VMD算法可以稀疏地分解信号,这将有助于CNN的特征提取。因此,使用VMD算法优化输入数据将有利于网络去噪的性能。此外,MRCNN采用可逆的下采样操作员来提高运行速度,在去噪结果和效率之间实现良好的权衡。对合成和实际嘈杂记录进行了广泛的实验,以评估MRCNN与现有的去噪者相比。广泛的实验表明MRCNN在地震去噪任务中表现出良好的效果。

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