Deep learning pre-stacked seismic velocity inversion using Res-Unet network

Fangda Li, Zhenwei Guo, Bochen Wang, Longyun Hu
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Abstract

Ocean carbon storage is one of the effective ways to achieve emission peak and carbon neutrality. It requires detailed characterization of the seabed reservoir. Seismic exploration is a method of using artificially excited seismic waves to identify subsurface structures. It is widely applied in hydrocarbon exploration and geological engineering, such as reservoir prediction, structural interpretation and subsurface cavity investigation. Currently, researchers investigate the application of the method to carbon storage. Stratum velocity is the key result of seismic data processing and imaging, which determines the accuracy and resolution of the stacked profile. It ultimately affects the results of geological structure identification. This paper proposed a new deep learning velocity inversion method with the convolutional network structure and mix loss function. The results illustrated that our inversion method has better accuracy and resolution than traditional convolutional networks, and is more suitable for velocity inversion.
基于Res-Unet网络的深度学习预叠加地震速度反演
海洋碳储存是实现碳排放峰值和碳中和的有效途径之一。这需要对海底储层进行详细描述。地震勘探是利用人工激发地震波识别地下构造的一种方法。它广泛应用于油气勘探和地质工程,如储层预测、构造解释和地下空腔调查。目前,研究人员正在研究该方法在碳储存中的应用。地层速度是地震资料处理和成像的关键结果,决定了叠加剖面的精度和分辨率。它最终影响到地质构造识别的结果。提出了一种基于卷积网络结构和混合损失函数的深度学习速度反演方法。结果表明,该方法比传统卷积网络具有更高的精度和分辨率,更适合于速度反演。
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