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Microseismic Signal Denoising and Separation Based on Fully Convolutional Encoder–Decoder Network

机译:基于全卷积编码器 - 解码器网络的微震信号去噪和分离

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Denoising methods are a highly desired component of signal processing, and they can separate the signal of interest from noise to improve the subsequent signal analyses. In this paper, an advanced denoising method based on a fully convolutional encoder–decoder neural network is proposed. The method simultaneously learns the sparse features in the time–frequency domain, and the mask-related mapping function for signal separation. The results show that the proposed method has an impressive performance on denoising microseismic signals containing various types and intensities of noise. Furthermore, the method works well even when a similar frequency band is shared between the microseismic signals and the noises. The proposed method, compared to the existing methods, significantly improves the signal–noise ratio thanks to minor changes of the microseismic signal (less distortion in the waveform). Additionally, the proposed methods preserve the shape and amplitude characteristics so that it allows better recovery of the real waveform. This method is exceedingly useful for the automatic processing of the microseismic signal. Further, it has excellent potential to be extended to the study of exploration seismology and earthquakes.
机译:去噪方法是信号处理的高度期望的成分,它们可以将感兴趣的信号与噪声分开以改善随后的信号分析。本文提出了一种基于全卷积编码器解码器神经网络的高级去噪方法。该方法同时学习时频域中的稀疏特征,以及用于信号分离的掩模相关的映射函数。结果表明,该方法对含有各种类型和噪声强度的脱色的微震信号具有令人印象深刻的性能。此外,即使在微震信号和噪声之间共享类似的频带,该方法也很好地运行。与现有方法相比,所提出的方法显着提高了信噪比,由于微震信号的次要变化(波形中的失真较小)。另外,所提出的方法保留形状和幅度特性,使得它允许更好地恢复真实波形。该方法非常有用用于自动处理微震信号。此外,它具有优异的潜力,延伸到勘探地震和地震的研究。

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