Unsupervised pre-stack seismic facies analysis constrained by spatial continuity

Yifeng Fei, Hanpeng Cai, Junhui Yang, Jiandong Liang, Guangmin Hu
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引用次数: 0

Abstract

Seismic facies analysis plays important roles in geological research, especially in sedimentary environment identification. Traditional method is mainly based on seismic waveform or attributes of a single seismic gather to classify the seismic facies. Ignoring the correlation between adjacent seismic gathers leads to poor lateral continuities in generated facies map, which cannot fit the sedimentary characteristics well. In fact, according to sedimentology theory, the horizontal continuities of the stratum can be utilized as priori information to provide more information for waveform classification. Therefore, we develop an unsupervised method for pre-stack seismic facies analysis, which is constrained by spatial continuity. The proposed method establishes a probabilistic model to characterize the correlation between neighboring reflection elements. Subsequently, this correlation is used as a regularization term to modify the objective function of the clustering algorithm, allowing the mode assignment of reflective elements to be influenced by the labels of their neighbors. Test on synthetic data confirms that, compared with traditional seismic facies analysis methods, the facies maps generated by the proposed method have more continuous and homogeneous textures, and less uncertainty on the boundary. The test on actual seismic data further confirms that the proposed method can describe more details of the distribution of lithological bodies of interest. The proposed method is an effective tool for pre-stack seismic facies analysis.

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空间连续性约束下的无监督叠前地震相分析
地震相分析在地质研究中,特别是在沉积环境识别中发挥着重要作用。传统的方法主要是根据地震波形或单个地震道集的属性对地震相进行分类。忽略相邻地震道集之间的相关性导致生成的相图横向连续性较差,不能很好地拟合沉积特征。事实上,根据沉积学理论,地层的水平连续性可以作为先验信息,为波形分类提供更多信息。因此,我们开发了一种受空间连续性约束的无监督叠前地震相分析方法。所提出的方法建立了一个概率模型来表征相邻反射元素之间的相关性。随后,该相关性被用作正则化项,以修改聚类算法的目标函数,从而允许反射元素的模式分配受到其邻居的标签的影响。对合成数据的测试证实,与传统的地震相分析方法相比,该方法生成的相图具有更连续、更均匀的纹理,边界不确定性更小。对实际地震数据的测试进一步证实了所提出的方法可以描述感兴趣的岩性体分布的更多细节。该方法是叠前地震相分析的有效工具。
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