基于深度学习的射域地震排阻

Jing Sun, Song Hou, Vetle Vinje, Gordon Poole, Leiv-J Gelius
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摘要

为了简化海量数据的快速处理,我们开发了一种深度学习方法,基于生成高质量训练数据的实用策略和一系列数据调节技术,在射孔域对地震数据进行去叠加,以提高数据驱动模型的性能。我们利用在每条测井线末端采集的未混合射孔采集数据,获取这些数据无需额外的时间或人力成本。通过手动混合这些数据,我们获得了能很好地控制地面实况并完全适应特定勘测的训练数据。此外,我们使用多通道输入来训练深度神经网络,其中包括作为附加通道的相邻混合射电采集。对混合噪声的预测是作为一项相关的辅助任务加入的,网络的主要任务是预测主源事件。由于地面实况中的混合噪声振幅过大,因此在训练和验证过程中对其进行了缩减。在这一过程中,要通过混合噪声对即将解散的镜头采集进行对齐。在逐个采集的野外混合数据上的实施表明,引入建议的数据调节步骤可以大大减少混合部分深部主源事件的泄漏。完整的拟议方法在浅层部分的表现几乎与传统算法一样好,并且在效率方面显示出巨大优势。对于较大的旅行时间,它的表现稍差,但仍能有效地去除混合噪声。
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Deep learning-based shot-domain seismic deblending
To streamline fast-track processing of large data volumes, we have developed a deep learning approach to deblend seismic data in the shot domain based on a practical strategy for generating high-quality training data along with a list of data conditioning techniques to improve performance of the data-driven model. We make use of unblended shot gathers acquired at the end of each sail line, to which the access requires no additional time or labor costs beyond the blended acquisition. By manually blending these data we obtain training data with good control of the ground truth and fully adapted to the given survey. Furthermore, we train a deep neural network using multi-channel inputs that include adjacent blended shot gathers as additional channels. The prediction of the blending noise is added in as a related and auxiliary task with the main task of the network being the prediction of the primary-source events. Blending noise in the ground truth is scaled down during the training and validation process due to its excessively strong amplitudes. As part of the process, the to-be-deblended shot gathers are aligned by the blending noise. Implementation on field blended-by-acquisition data demonstrates that introducing the suggested data conditioning steps can considerably reduce the leakage of primary-source events in the deep part of the blended section. The complete proposed approach performs almost as well as a conventional algorithm in the shallow section and shows great advantage in efficiency. It performs slightly worse for larger traveltimes, but still removes the blending noise efficiently.
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