Attenuation of marine seismic interference noise employing a customized U-Net
Jing Sun, Sigmund Slang, Thomas Elboth, Thomas Larsen Greiner, Steven, McDonald, Leiv-J Gelius

TL;DR
This paper introduces a customized U-Net neural network for rapid and effective removal of marine seismic interference noise from field data, significantly improving processing speed over traditional methods.
Contribution
A novel U-Net architecture with element-wise summation skip connections tailored for seismic interference noise removal, enabling faster processing with comparable quality to existing algorithms.
Findings
Performs well with minor residuals on most data
Can handle side-originating noise with increased network depth
Processes shot gathers in approximately 0.02 seconds, much faster than industry methods
Abstract
Marine seismic interference noise occurs when energy from nearby marine seismic source vessels is recorded during a seismic survey. Such noise tends to be well preserved over large distances and cause coherent artifacts in the recorded data. Over the years, the industry has developed various denoising techniques for seismic interference removal, but although well performing they are still time-consuming in use. Machine-learning based processing represents an alternative approach, which may significantly improve the computational efficiency. In case of conventional images, autoencoders are frequently employed for denoising purposes. However, due to the special characteristics of seismic data as well as the noise, autoencoders failed in the case of marine seismic interference noise. We therefore propose the use of a customized U-Net design with element-wise summation as part of the…
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