论文标题

地震处理的深度扩散模型

Deep Diffusion Models for Seismic Processing

论文作者

Durall, Ricard, Ghanim, Ammar, Fernandez, Mario, Ettrich, Norman, Keuper, Janis

论文摘要

地震数据处理涉及处理在获取和预处理过程中发生的不良影响的技术。这些效果主要包括连贯的人工制品,例如倍数,非连通信号,例如电噪声以及导致不完全痕迹的接收器的信号信息丢失。在过去的几年中,基于机器学习的解决方案已大大增加了上述问题。特别是,深度学习的从业者通常依赖于严重的微调,定制的歧视性算法。尽管这些方法可以提供可靠的结果,但它们似乎缺乏对所提供数据的语义理解。在这项工作中,我们采用了一种生成解决方案,因为它可以显式地对复杂的数据分布进行建模,从而产生更好的决策过程。特别是,我们介绍了三种地震应用的扩散模型:倒数,插值和插值。为此,我们对合成和实际数据进行实验,并将扩散性能与标准化算法进行比较。我们认为,我们的先驱研究不仅展示了扩散模型的能力,而且还为将来的研究打开了将生成模型整合到地震工作流程中的大门。

Seismic data processing involves techniques to deal with undesired effects that occur during acquisition and pre-processing. These effects mainly comprise coherent artefacts such as multiples, non-coherent signals such as electrical noise, and loss of signal information at the receivers that leads to incomplete traces. In the past years, there has been a remarkable increase of machine-learning-based solutions that have addressed the aforementioned issues. In particular, deep-learning practitioners have usually relied on heavily fine-tuned, customized discriminative algorithms. Although, these methods can provide solid results, they seem to lack semantic understanding of the provided data. Motivated by this limitation, in this work, we employ a generative solution, as it can explicitly model complex data distributions and hence, yield to a better decision-making process. In particular, we introduce diffusion models for three seismic applications: demultiple, denoising and interpolation. To that end, we run experiments on synthetic and on real data, and we compare the diffusion performance with standardized algorithms. We believe that our pioneer study not only demonstrates the capability of diffusion models, but also opens the door to future research to integrate generative models in seismic workflows.

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