NOISE SUPPRESSION OF RECEIVER FUNCTIONS USING CURVELET TRANSFORM

QI Shao-Hua, LIU Qi-Yuan, CHEN Jiu-Hui, GUO Biao
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引用次数: 1

Abstract

Suppressing the scattering induced by the laterally heterogeneous media is important for imaging the crustal structure and its anisotropy from Receiver Functions (RFs) based on the laterally stratified model. Although the scattering can be suppressed, to some degree, with stacking technique or low-pass filtering, these may lead to undesired waveform distortion, information loss or resolution reduction. To avoid these problems, we make use of the curvelet transform technique, which is developing rapidly in recent years, to reduce the scattering field in the RFs. Unlike exploration seismology, our major challenge comes from the spatially nonuniform sampling of RFs, caused by the spatially incomplete and uneven distribution of stations and events. To overcome these difficulties, we combine the compressed sensing theory with the curvelet-based denoising method to realize the denoising and wavefield reconstruction, simultaneously. To verify our idea, we have tested the denoising and wavefield reconstruction with synthetic RFs and then apply our method to the observed data at one of the IRIS GSN stations and the western Sichuan array, respectively. The results show that: 1) our method is efficient in suppressing the scattering induced by the lateral heterogeneity of the crust, which leads to great improvement of the signal-to-noise ratio and spatial traceability of the RFs. This is valuable for the waveform imaging of the crustal structure and anisotropic parameters from the RFs; 2) the missing data caused by the event distribution can be correctly reconstructed; 3) our method can be applied to either single station or seismic array observations, but it is more efficient in single station observation than the seismic array study.

利用曲波变换对接收函数进行噪声抑制
抑制横向非均质介质引起的散射对于基于横向分层模型的接收函数成像地壳结构及其各向异性具有重要意义。虽然可以通过叠加技术或低通滤波在一定程度上抑制散射,但这可能导致不希望的波形失真、信息丢失或分辨率降低。为了避免这些问题,我们利用近年来发展迅速的曲波变换技术来减小射频散射场。与勘探地震学不同,我们的主要挑战来自于RFs的空间不均匀采样,这是由站点和事件的空间不完整和不均匀分布造成的。为了克服这些困难,我们将压缩感知理论与基于曲线的去噪方法相结合,同时实现了去噪和波场重建。为了验证我们的想法,我们用合成射频测试了去噪和波场重建,然后将我们的方法分别应用于IRIS GSN站和川西阵列的观测数据。结果表明:1)该方法有效地抑制了地壳横向非均质性引起的散射,极大地提高了红外光谱的信噪比和空间可追溯性。这对于从RFs得到的地壳结构和各向异性参数的波形成像是有价值的;2)能够正确重构由事件分布导致的数据缺失;3)该方法既适用于单台站观测,也适用于地震台阵观测,但单台站观测比地震台阵研究效率更高。
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