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F-X域复数经验模态分解去噪方法(英文)

Random noise attenuation by f–x spatial projection-based complex empirical mode decomposition predictive filtering

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【作者】 马彦彦李国发王钧周辉张保江

【Author】 Ma Yan-Yan;Li Guo-Fa;Wang Yao-Jun;Zhou Hui;Zhang Bao-Jiang;State Key Laboratory of Petroleum Resources and Prospecting, China University of Petroleum;CNPC Key Laboratory of Geophysical Prospecting, China University of Petroleum;Petroleum Exploration and Production Research Institute, SINOPEC;

【机构】 中国石油大学(北京)油气资源与探测国家重点实验室中国石油大学(北京)CNPC物探重点实验室中国石化石油勘探开发研究院

【摘要】 F-X域经验模态分解去噪方法在处理非稳态地震数据时存在两个局限,一是单纯剔除第一个固有模态分量将导致有效信号缺失及去噪能力偏弱问题,二是分解复信号时对实部和虚部分别分解存在分解数目不一致的风险。本文对上述两个方面进行了改进,提出了一种新的F-X域投影法复数经验模态分解预测滤波方法,首先采用基于空间投影的复数经验模态分解将F-X域地震数据直接分解为不同的复固有模态分量,然后再对这些分量分别进行F-X域预测滤波。合成记录及实际资料测试表明,本文的新方法能更好地衰减随机噪声,更有效地保持地震信号。

【Abstract】 The frequency–space(f–x) empirical mode decomposition(EMD) denoising method has two limitations when applied to nonstationary seismic data. First, subtracting the first intrinsic mode function(IMF) results in signal damage and limited denoising. Second, decomposing the real and imaginary parts of complex data may lead to inconsistent decomposition numbers. Thus, we propose a new method named f–x spatial projection-based complex empirical mode decomposition(CEMD) prediction filtering. The proposed approach directly decomposes complex seismic data into a series of complex IMFs(CIMFs) using the spatial projection-based CEMD algorithm and then applies f–x predictive filtering to the stationary CIMFs to improve the signal-to-noise ratio. Synthetic and real data examples were used to demonstrate the performance of the new method in random noise attenuation and seismic signal preservation.

【基金】 supported financially by the National Natural Science Foundation(No.41174117);the Major National Science and Technology Projects(No.2011ZX05031–001)
  • 【文献出处】 Applied Geophysics ,应用地球物理(英文版) , 编辑部邮箱 ,2015年01期
  • 【分类号】P631.44
  • 【被引频次】4
  • 【下载频次】90
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