A convolutional neural network approach to deblending seismic data
Jing Sun, Sigmund Slang, Thomas Elboth, Thomas Larsen Greiner, Steven, McDonald, and Leiv-J Gelius

TL;DR
This paper introduces a deep learning-based seismic deblending method using CNNs, enabling faster processing with comparable accuracy to traditional algorithms, and demonstrates robustness across different datasets.
Contribution
The study presents a novel CNN approach for seismic deblending that reduces processing time and adapts to different data sets, improving efficiency over conventional methods.
Findings
CNN achieves near real-time deblending.
Performance is influenced by initial SNR.
Method is robust across different geological areas.
Abstract
For economic and efficiency reasons, blended acquisition of seismic data is becoming more and more commonplace. Seismic deblending methods are always computationally demanding and normally consist of multiple processing steps. Besides, the parameter setting is not always trivial. Machine learning-based processing has the potential to significantly reduce processing time and to change the way seismic deblending is carried out. We present a data-driven deep learning-based method for fast and efficient seismic deblending. The blended data are sorted from the common source to the common channel domain to transform the character of the blending noise from coherent events to incoherent distributions. A convolutional neural network (CNN) is designed according to the special character of seismic data, and performs deblending with comparable results to those obtained with conventional industry…
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Taxonomy
MethodsSparse Evolutionary Training
