A Structure-Guided and Sparse-Representation-Based 3d Seismic Inversion Method

B. She, Yaojun Wang, Guang Hu
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Abstract

Existing seismic inversion methods are usually 1D, mainly focusing on improving the vertical resolution of inversion results. A few 2D or 3D inversion techniques are either too simple and lack the consideration of stratigraphic structures, or are too complicated which need to extract dip information and solve a complex constrained optimization problem. In this work, with the help of gradient structure tensor (GST) and dictionary learning and sparse representation (DLSR) technologies, we propose a 3D inversion approach (GST-DLSR) that considers both vertical and horizontal structural constraints. In the vertical direction, we investigate the vertical structural features of subsurface models from well-log data by DLSR. In the horizontal direction, we obtain the stratigraphic structural features from a 3D seismic image by GST. We then apply the acquired structural features to constraint the entire inversion procedure. The experiments show that GST-DLSR takes good advantages of both techniques, enabling to produce inversion results with high resolution, good lateral continuity, and enhanced structural features.
一种结构导向的稀疏表示三维地震反演方法
现有的地震反演方法通常是一维的,主要侧重于提高反演结果的垂向分辨率。一些二维或三维反演技术要么过于简单,缺乏对地层结构的考虑,要么过于复杂,需要提取倾角信息,求解复杂的约束优化问题。在这项工作中,借助梯度结构张量(GST)和字典学习和稀疏表示(DLSR)技术,我们提出了一种考虑垂直和水平结构约束的3D反演方法(GST-DLSR)。在垂向上,利用DLSR研究了测井资料中地下模型的垂向构造特征。在水平方向上,利用GST从三维地震图像中获取地层构造特征。然后,我们应用获得的结构特征来约束整个反演过程。实验表明,GST-DLSR综合了两种技术的优点,反演结果分辨率高,横向连续性好,结构特征增强。
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