DAS-VSP coupled noise suppression based on U-Net network

Author:

Xu Jing-Xia123,Ren Hao-Ran123ORCID,Zhu Zhao-Lin23,Wang Tong123,Chen Zhi-Hao234

Affiliation:

1. Key Laboratory of Geoscience Big Data and Deep Resource of Zhejiang Province, School of Earth Sciences, Zhejiang University , Hangzhou 310058 , China

2. Hainan Institute, Zhejiang University , Sanya 572025 , China

3. Explosion and Seismic Sensing Research Center, Advanced Technology Institute, Zhejiang University , Hangzhou 310027 , China

4. Ocean College, Zhejiang University , Zhoushan 316021 , China

Abstract

Abstract The emerging distributed fiber-optic acoustic sensing (DAS) technology has broad prospects for application in vertical seismic profiles (VSP). However, the acquired DAS-VSP data often suffers from coupled noise that seriously affects data quality. Traditional methods for suppressing coupled noise are usually time-consuming and not suitable for the large-scale denoising of DAS-VSP data. To address this, a coupled noise suppression method based on the U-Net network is proposed, and a self-attention (SA) block is introduced to enhance the denoising ability of the network. Transfer learning is employed to achieve coupled noise suppression from synthetic data to field data. Denoising results demonstrate that the network can effectively suppress coupled noise in DAS-VSP data while preserving signal energy to a certain extent, exhibiting strong generalization capability. Upon completion of network training, denoising results can be obtained within seconds, making it more convenient and efficient compared to traditional methods.

Funder

Sanya Yazhou Bay Science and Technology City

National Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

Reference23 articles.

1. Nuclei segmentation with recurrent residual convolutional neural networks based u-net (r2u-net);Alom,2018

2. Augmented deep learning workflow for robust fault prediction over multiple tectonic regimes;Chen;J Geophys Eng,2022

3. Distributed acoustic sensing coupling noise removal based on sparse optimization;Chen;Interpretation,2019

4. Convolutional neural network for seismic impedance inversion;Das;Geophys,2019

5. Random and coherent noise suppression in DAS-VSP data by using a supervised deep learning method;Dong;IEEE Geosci Remote Sens Lett,2020

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