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SeisDeNet: an intelligent seismic data Denoising network for the internet of things

Published: 08 March 2023 Publication History

Abstract

Deep learning (DL) has attracted tremendous interest in various fields in last few years. Convolutional neural networks (CNNs) based DL architectures have been successfully applied in computer vision, medical image processing, remote sensing, and many other fields. A recent work has proved that CNNs based models can also be used to handle geophysical problems. Due to noises in seismic signals acquired by geophone equipment this kind of important multimedia resources cannot be effectively utilized in practice. To this end, from the perspective of seismic exploration informatization, this paper takes informatization data in seismic signal acquisition and energy exploration field using cutting-edge technologies such as Internet of things and cloud computing as the research object, presenting a novel CNNs based seismic data denoising (SeisDeNet) architecture is suggested. Firstly, a multi-scale residual dense (MSRD) block is built to leverage the characteristics of seismic data. Then, a deep MSRD network (MSRDN) is proposed to restore the noisy seismic data in a coarse-to-fine manner by using cascading MSRDs. Additionally, the denoising problem is formulated into predicting transform-domain coefficients, by which noises can be further removed by MSRDNs while richer structure details are preserved comparing with the results in spatial domain. By using synthetic seismic records, public SEG and EAGE salt and overthrust seismic model and real field seismic data, the proposed method is qualitatively and quantitatively compared with other leading edge schemes to evaluate it performance, and some results shows that the proposed scheme can produce data with higher quality evaluation while maintaining far more useful data comparing with other schemes. The feasibility of this approach is confirmed by the denoising results, and this approach is shown to be promising in suppressing the seismic noise automatically.

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Cited By

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  • (2025)ICAT-net: a lightweight neural network with optimized coordinate attention and transformer mechanisms for earthquake detection and phase pickingThe Journal of Supercomputing10.1007/s11227-024-06664-y81:1Online publication date: 1-Jan-2025

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Information

Published In

cover image Journal of Cloud Computing: Advances, Systems and Applications
Journal of Cloud Computing: Advances, Systems and Applications  Volume 12, Issue 1
Jun 2023
2838 pages
ISSN:2192-113X
EISSN:2192-113X
Issue’s Table of Contents

Publisher

Hindawi Limited

London, United Kingdom

Publication History

Published: 08 March 2023
Accepted: 01 December 2022
Received: 30 November 2021

Author Tags

  1. Seismic data
  2. Internet of things
  3. Denoising
  4. CNNs
  5. MSRDN
  6. Transform domain

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  • Research-article

Funding Sources

  • Scientific Research Project of Colleges and Universities in Liaoning Province of China
  • Young Scientists Fund
  • PhD Startup Foundation of Liaoning Technical University of China
  • Scientific Research Project of Liaoning Provincial Department of Education

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Cited By

View all
  • (2025)ICAT-net: a lightweight neural network with optimized coordinate attention and transformer mechanisms for earthquake detection and phase pickingThe Journal of Supercomputing10.1007/s11227-024-06664-y81:1Online publication date: 1-Jan-2025

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