Research on microseismic denoising method based on CBDNet

Jianchao Lin, Jing Zheng, Dewei Li, Zhixiang Wu
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Abstract

Noise suppression is an important part of microseismic monitoring technology. Signal and noise can be separated by denoising and filtering to improve the subsequent analysis. In this paper, we propose a new denoising method based on convolutional blind denoising network (CBDNet). The method is partially modified for image denoising network CBDNet to make it suitable for one–dimensional data denoising. At present, most of the existing filtering methods are proposed for the Gaussian white noise denoising. In contrast, the proposed method also learns the wind noise, construction noise, traffic noise and mixed noise through the strategy of residual learning. The full convolution subnetwork is used to estimate the noise level, which significantly improves the signal-to-noise ratio and its performance of removing the correlated noise. The model is trained with different types of real noise and random noise. The denoising result is evaluated by corresponding indexes and compared with other denoising methods. The results show that the proposed method has better denoising performance than traditional methods, and it has a superior noise suppression level for oil well construction noise and mixed noise. The proposed method can suppress the interference of time–frequency overlapped end to end and still have noise suppression and event detection capability even if the signal is superimposed on other types of noise.

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基于CBDNet的微地震去噪方法研究
噪声抑制是微震监测技术的重要组成部分。信号和噪声可以通过去噪和滤波来分离,以改进后续的分析。在本文中,我们提出了一种新的基于卷积盲去噪网络(CBDNet)的去噪方法。该方法对图像去噪网络CBDNet进行了部分修改,使其适用于一维数据去噪。目前,现有的滤波方法大多是针对高斯白噪声提出的去噪方法。相比之下,该方法还通过残差学习策略学习了风噪声、建筑噪声、交通噪声和混合噪声。全卷积子网络用于估计噪声水平,显著提高了信噪比及其去除相关噪声的性能。该模型使用不同类型的真实噪声和随机噪声进行训练。通过相应的指标对去噪结果进行评价,并与其他去噪方法进行比较。结果表明,该方法比传统方法具有更好的去噪性能,对油井施工噪声和混合噪声具有较好的抑制水平。所提出的方法可以抑制时频端到端重叠的干扰,并且即使信号叠加在其他类型的噪声上,仍然具有噪声抑制和事件检测能力。
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