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Application of spectral decomposition using regularized non-stationary autoregression to random noise attenuation

机译:使用正则化非平稳自回归进行频谱分解在随机噪声衰减中的应用

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摘要

We propose an application of spectral decomposition using regularized non-stationary autoregression (SDRNAR) to random noise attenuation. SDRNAR is a recently proposed signal-analysis method, which aims at decomposing the seismic signal into several spectral components, each of which has a smoothly variable frequency and smoothly variable amplitude. In the proposed novel denoising approach, random noise is deemed to be the residual part of decomposed spectral components because it is unpredictable. One unique property of this novel denoising approach is that the amplitude maps for different frequency components can be obtained during the denoising process, which can be valuable for some interpretation tasks. Compared with the spectral decomposition algorithm by empirical mode decomposition (EMD), SDRNAR has higher efficiency and better decomposition performance. Compared with f - x deconvolution and mean filter, the proposed denoising approach can obtain higher signal-to-noise ratio (SNR) and preserve more useful energy. The proposed approach can only be applied to seismic profiles with relatively flat events, which becomes its main limitation. However, because it is applied trace by trace, it can preserve spatial discontinuities. We use both synthetic and field data examples to demonstrate the performance of the proposed method.
机译:我们提出使用正则化的非平稳自回归(SDRNAR)进行频谱分解的应用,以用于随机噪声衰减。 SDRNAR是最近提出的信号分析方法,旨在将地震信号分解为几个频谱分量,每个频谱分量具有平滑可变的频率和平滑可变的振幅。在提出的新颖去噪方法中,随机噪声被认为是分解频谱分量的残留部分,因为它是不可预测的。这种新颖的降噪方法的独特之处在于,可以在降噪过程中获得不同频率分量的幅度图,这对于某些解释任务可能是有价值的。与基于经验模态分解(EMD)的频谱分解算法相比,SDRNAR具有更高的效率和更好的分解性能。与f-x反卷积和均值滤波器相比,该方法具有较高的信噪比(SNR)并保留了更多的有用能量。所提出的方法只能应用于具有相对平坦事件的地震剖面,这成为其主要限制。但是,由于逐条跟踪地应用它,因此可以保留空间不连续性。我们使用合成和现场数据示例来证明所提出的方法的性能。

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