单通道被动地震去噪的字典学习

IF 2.6 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Yangkang Chen, Alexandros Savvaidis, Sergey Fomel
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引用次数: 0

摘要

被动地震去噪主要使用简单的带通滤波器,当信号和噪声共享同一频带时,可能会出现问题。更先进的被动地震去噪方法利用固定基变换(如小波变换)来去除噪声。在这里,我们提出了一个基于自适应学习稀疏变换的数据驱动去噪的开源包。与固定基变换相反,该方法属于自适应基变换。我们从所有可用的波形数据集中学习被动地震数据中嵌入的一维特征,而不需要数据驱动方式的空间相干性。因此,由于该方法具有数据驱动和单通道的特点,因此可以灵活地应用于任何被动地震监测项目。针对传统字典学习框架中k -奇异值分解(KSVD)计算量大的问题,提出了一种快速的无奇异值字典学习方法,可用于被动地震监测中海量地震数据的处理。将该方法应用于2个合成数据和3个真实被动地震数据集,验证了该方法在提高信噪比方面的有效性,以及在到达拾取等方面的应用潜力。可以在数据和参考资料一节中找到开源可复制包。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dictionary Learning for Single-Channel Passive Seismic Denoising
Abstract Passive seismic denoising is mostly performed using a simple band-pass filter, which can be problematic when signal and noise share the same frequency band. More advanced passive seismic denoising methods take advantage of fixed-basis transforms, for example, the wavelet, to remove noise. Here, we present an open-source package for data-driven denoising based on adaptively learning sparse transform. Contrary to the fixed-basis transforms, the proposed method belongs to the adaptive-basis transforms. We learn the 1D features embedded in the passive seismic data from all the available waveform data sets without requiring spatial coherency in a data-driven way. Thus, the new method is flexible to apply in any passive seismic monitoring project because of its data-driven and single-channel nature when implemented. Considering the computationally expensive K-singular-value-decomposition (KSVD) in the traditional dictionary learning framework, we suggest applying a fast SVD-free dictionary learning method that can be readily applicable to process massive seismic data during passive seismic monitoring. The proposed method is applied to two synthetic data examples and three real passive seismic data sets to demonstrate its effectiveness in improving the signal-to-noise ratio, and its potential in applications like arrival picking. The open-source reproducible package can be found in the Data and Resources section.
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来源期刊
Seismological Research Letters
Seismological Research Letters 地学-地球化学与地球物理
CiteScore
6.60
自引率
12.10%
发文量
239
审稿时长
3 months
期刊介绍: Information not localized
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