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反假频非均匀地震数据重建方法研究

A STUDY ON ALGORITHM FOR RECONSTRUCTION OF DE-ALIAS UNEVEN SEISMIC DATA

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【作者】 刘喜武刘洪刘彬

【Author】 LIU Xi-Wu 1,2 LIU Hong 1 LIU Bin 3 1 Institute of Geology and Geophysics, Chinese Academy of Sciences, Beijing 100029, China 2 Graduate School, Chinese Academy of Sciences, Beijing 100039, China 3 Department of Physics, University of Alberta, Edmonton T6G2J1, Canada

【机构】 中国科学院地质与地球物理研究所Department of PhysicsUniversity of AlbertaEdmonton T6G2J1Canada 北京100029中国科学院研究生院北京100039北京100029

【摘要】 研究基于Fourier变换的数据重建方法 ,既能进行非均匀采样数据重建 ,又可以去除空间假频 .将不规则采样数据重建问题归结为信息重建的地球物理反演问题 ,采用最小二乘方法从观测的稀疏或不规则数据反演模型空间完全信息 .在求解信息重建反演问题时 ,引入DFT 加权范数规则化策略 ,采用预条件共轭梯度法 (PCG)求解 ,保证解的稳定性和收敛速度 .处理线性同相轴假频问题时 ,根据采样定理 ,引入线性预测方法 ,采用Yule Walker方程由带限信号的无假频低频功率谱预测高频功率谱 ,达到反假频目的 .本文研究了均匀采样数据内插 ,非均匀采样数据重建 ,非均匀分布高频信息重建等方面问题 ,数值试验取得较好效果 .

【Abstract】 Spacial trace interpolation is one of the most important issues in seismic data processing. In this paper, a novel Fourier transform based algorithm is proposed, which can reconstruct both uneven and alias seismic data. We formulate band-limited data reconstruction as a minimum norm least squares (LS) type problem where an adaptive DFT-weighted norm regularization term is used. The inverse problem is solved by the pre-conditional conjugate gradient method, which makes the solutions stable and convergence quick. Based on the assumption that seismic data are consisted of finite linear events, and from sampling theorem, alias events can be attenuated via LS weight predicted linearly from low frequency. Three application issues are discussed on even gap trace interpolation, uneven gap filling, and high frequency trace reconstruction from low frequency data trace constrained by few high frequency traces. Both synthetic and real data numerical examples show the proposed method is valid, efficient and applicable.

【基金】 中国科学院知识创新工程重大项目 (KZCX1 SW 18)
  • 【文献出处】 地球物理学报 ,Chinese Journal of Geophysics , 编辑部邮箱 ,2004年02期
  • 【分类号】P631.4
  • 【被引频次】81
  • 【下载频次】457
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