DNN-based workflow for attenuating seismic interference noise and its application to marine towed streamer data from the Northern Viking Graben
Jing Sun, Song Hou, and Alaa Triki

TL;DR
This paper introduces a deep neural network workflow for effectively removing seismic interference noise from marine towed streamer data, demonstrating improved results over traditional methods in a challenging real-world dataset.
Contribution
The authors develop a novel DNN-based workflow that leverages a small initial estimate of interference noise and adjacent shot data to enhance seismic signal fidelity, outperforming conventional algorithms.
Findings
DNN workflow reduces residual noise more effectively than traditional methods.
Application to Northern Viking Graben data shows improved signal preservation.
Workflow is efficient and feasible for real seismic processing projects.
Abstract
To separate seismic interference (SI) noise while ensuring high signal fidelity, we propose a deep neural network (DNN)-based workflow applied to common shot gathers (CSGs). In our design, a small subset of the entire to-be-processed data set is first processed by a conventional algorithm to obtain an estimate of the SI noise (from now on called the SI noise model). By manually blending the SI noise model with SI-free CSGs and a set of simulated random noise, we obtain training inputs for the DNN. The SI-free CSGs can be either real SI-free CSGs from the survey or SI-attenuated CSGs produced in parallel with the SI noise model from the conventional algorithm depending on the specific project. To enhance the DNN's output signal fidelity, adjacent shots on both sides of the to-be-processed shot are used as additional channels of the input. We train the DNN to output the SI noise into one…
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