Noise attenuation of the Sparker Seismic Oceanography data using Machine learning
Abstract
Seismic oceanography (SO) is a method of obtaining the structure and physical properties of ocean by using the seismic exploration and processing. The advantage of the SO is that the data acquired by using SO has higher lateral resolution than the data acquired by using the conventional oceanographic devices. Therefore, the SO has been used to study the distribution of the water mass, the dissipation of the turbulence, and characteristic of the internal waves in many regions. In most SO studies, the seismic data was obtained by using the air-gun, but recently the sparker was also used to generate higher frequency source wavelet. The use of the higher frequency components increases the vertical resolution of the seismic data, which can provide much detail information of the ocean. However, the low signal to noise ratio of the sparker seismic data is one of the biggest obstacles of using sparker source in SO study. The energy of the sparker source is much smaller than the energy of the air-gun source, thus the influence of the random noise is severer in sparker seismic data than in the air-gun seismic data. Therefore, the attenuation of the random noise in the sparker seismic data is one of the important issues in SO data processing. In this study, we applied convolutional neural network (CNN) to attenuate the random noise in the sparker seismic data. The Denoising Convolutional Neural Network (DnCNN) which extracts the noise from the seismic section is used as the CNN architecture. To construct the training data, we both used synthetic and field seismic data. The trained model was applied to the field seismic data and successfully extracted the random noise from the seismic section.
- Publication:
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AGU Fall Meeting Abstracts
- Pub Date:
- December 2019
- Bibcode:
- 2019AGUFM.S43E0694J
- Keywords:
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- 0555 Neural networks;
- fuzzy logic;
- machine learning;
- COMPUTATIONAL GEOPHYSICS;
- 1910 Data assimilation;
- integration and fusion;
- INFORMATICS;
- 1914 Data mining;
- INFORMATICS;
- 1942 Machine learning;
- INFORMATICS