Ground Roll Suppression using Convolutional Neural Networks
- URL: http://arxiv.org/abs/2010.15209v1
- Date: Wed, 28 Oct 2020 20:21:21 GMT
- Title: Ground Roll Suppression using Convolutional Neural Networks
- Authors: Dario Augusto Borges Oliveira, Daniil Semin, Semen Zaytsev
- Abstract summary: Ground roll noise is one of the most challenging and common noises observed in pre-stack seismic data.
We take advantage of the highly non-linear features of convolutional neural networks to detect ground roll in shot gathers.
We propose metrics to evaluate ground roll suppression, and report strong results compared to expert filtering.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Seismic data processing plays a major role in seismic exploration as it
conditions much of the seismic interpretation performance. In this context,
generating reliable post-stack seismic data depends also on disposing of an
efficient pre-stack noise attenuation tool. Here we tackle ground roll noise,
one of the most challenging and common noises observed in pre-stack seismic
data. Since ground roll is characterized by relative low frequencies and high
amplitudes, most commonly used approaches for its suppression are based on
frequency-amplitude filters for ground roll characteristic bands. However, when
signal and noise share the same frequency ranges, these methods usually deliver
also signal suppression or residual noise. In this paper we take advantage of
the highly non-linear features of convolutional neural networks, and propose to
use different architectures to detect ground roll in shot gathers and
ultimately to suppress them using conditional generative adversarial networks.
Additionally, we propose metrics to evaluate ground roll suppression, and
report strong results compared to expert filtering. Finally, we discuss
generalization of trained models for similar and different geologies to better
understand the feasibility of our proposal in real applications.
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