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基于DTW距离的变厚度地层地震波形聚类方法 被引量:1
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作者 洪忠 李坤鸿 +1 位作者 苏明军 胡光岷 《Applied Geophysics》 SCIE CSCD 2020年第2期171-181,314,共12页
地震波形聚类分析技术是岩相识别和储层表征的有效手段。现今的波形聚类方法都基于等厚时窗研发,适用于厚度稳定的地层。当地层的地震时间厚度不恒定时,沿层提取的等长度地震波形难以准确、完整的包含目的层的岩性及岩性组合信息。为此... 地震波形聚类分析技术是岩相识别和储层表征的有效手段。现今的波形聚类方法都基于等厚时窗研发,适用于厚度稳定的地层。当地层的地震时间厚度不恒定时,沿层提取的等长度地震波形难以准确、完整的包含目的层的岩性及岩性组合信息。为此,我们研发了基于变厚度地层地震波形聚类方法,使其应用范围更为广泛。首次应用DTW(动态时间规整)距离来有效度量不同长度地震波形间的相似性。其次,研发了基于DTW距离的波形聚类方法来提取地震道质心,并根据地震道和质心的DTW距离判别地震道的类别;研发了基于超像素的地震抽稀算法,为解决该波形聚类算法在应用于三维地震资料时所面临的大运算量问题。我们将地震数据抽稀和基于DTW距离的波形聚类算法相结合,形成了一套适用于生产的基于DTW距离的变厚度地层地震波形聚类技术完整流程。地震正演测试表明:同传统基于等时窗的波形聚类技术相比,该方法能准确的识别变厚度不同岩性或岩性组合的边界。在实际工区测试中,基于新方法的波形聚类平面图与井上储层厚度的匹配程度较高,可作为地震储层预测和井位部署的可靠依据。 展开更多
关键词 DTW距离 变厚度地层 地震波形聚类 超像素 地震数据抽稀
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Unsupervised seismic facies analysis using sparse representation spectral clustering 被引量:3
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作者 Wang Yao-Jun Wang liang-Ji +3 位作者 li kun-hong liu Yu Luo Xian-Zhe Xing Kai 《Applied Geophysics》 SCIE CSCD 2020年第4期533-543,共11页
Traditional unsupervised seismic facies analysis techniques need to assume that seismic data obey mixed Gaussian distribution.However,fi eld seismic data may not meet this condition,thereby leading to wrong classifi c... Traditional unsupervised seismic facies analysis techniques need to assume that seismic data obey mixed Gaussian distribution.However,fi eld seismic data may not meet this condition,thereby leading to wrong classifi cation in the application of this technology.This paper introduces a spectral clustering technique for unsupervised seismic facies analysis.This algorithm is based on on the idea of a graph to cluster the data.Its kem is that seismic data are regarded as points in space,points can be connected with the edge and construct to graphs.When the graphs are divided,the weights of the edges between the different subgraphs are as low as possible,whereas the weights of the inner edges of the subgraph should be as high as possible.That has high computational complexity and entails large memory consumption for spectral clustering algorithm.To solve the problem this paper introduces the idea of sparse representation into spectral clustering.Through the selection of a small number of local sparse representation points,the spectral clustering matrix of all sample points is approximately represented to reduce the cost of spectral clustering operation.Verifi cation of physical model and fi eld data shows that the proposed approach can obtain more accurate seismic facies classification results without considering the data meet any hypothesis.The computing efficiency of this new method is better than that of the conventional spectral clustering method,thereby meeting the application needs of fi eld seismic data. 展开更多
关键词 seismic facies analysis spectral clustering sparse representation and unsupervised clustering
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