Using Convolutional Neural Networks for Denoising and Deblending of Marine Seismic Data

Sigmund Slang, Jing Sun, Thomas Elboth, Steven McDonald, Leiv-J. Gelius
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Abstract

Processing marine seismic data is computationally demanding and consists of multiple time-consuming steps. Neural network based processing can, in theory, significantly reduce processing time and has the potential to change the way seismic processing is done. In this paper we are using deep convolutional neural networks (CNNs) to remove seismic interference noise and to deblend seismic data. To train such networks, a significant amount of computational memory is needed since a single shot gather consists of more than 106 data samples. Preliminary results are promising both for denoising and deblending. However, we also observed that the results are affected by the signal-to-noise ratio (SnR). Moving to common channel domain is a way of breaking the coherency of the noise while also reducing the input volume size. This makes it easier for the network to distinguish between signal and noise. It also increases the efficiency of the GPU memory usage by enabling better utilization of multi core processing. Deblending in common channel domain with the use of a CNN yields relatively good results and is an improvement compared to shot domain.
利用卷积神经网络对海洋地震数据进行去噪和去漂白
海洋地震数据处理对计算要求很高,包括多个耗时步骤。理论上,基于神经网络的处理可以大大缩短处理时间,并有可能改变地震处理的方式。在本文中,我们使用深度卷积神经网络(CNNs)来去除地震干扰噪音并对地震数据进行去盲处理。要训练这样的网络,需要大量的计算内存,因为单个震源采集的数据样本超过 106 个。然而,我们也观察到结果受到信噪比(SnR)的影响。转到公共信道域是打破噪声一致性的一种方法,同时还能减少输入量的大小。这使得网络更容易区分信号和噪声。它还能更好地利用多核处理器,从而提高 GPU 内存的使用效率。使用 CNN 在公共信道域进行解混产生了相对较好的结果,与射域相比有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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