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基于jitter采样和曲波变换的三维地震数据重建
引用本文:张华,陈小宏.基于jitter采样和曲波变换的三维地震数据重建[J].地球物理学报,2013,56(5):1637-1649.
作者姓名:张华  陈小宏
作者单位:1. 中国石油大学(北京)海洋石油勘探国家工程实验室,北京 102249; 2. 东华理工大学放射性地质与勘探技术国防重点学科实验室,江西抚州 344000
基金项目:国家科技油气重大专项,江西省教育厅青年科学基金项目
摘    要:传统的地震勘探数据采样必须遵循奈奎斯特采样定理,而野外数据采样可能由于地震道缺失或者勘探成本限制,不一定满足采样定理要求,因此存在数据重建问题.本文基于压缩感知理论,利用随机欠采样方法将传统规则欠采样所带来的互相干假频转化成较低幅度的不相干噪声,从而将数据重建问题转为更简单的去噪问题.在数据重建过程中引入凸集投影算法(POCS),提出采用e-√x(0≤x≤1)衰减规律的阈值参数,构建基于曲波变换三维地震数据重建技术.同时针对随机采样的不足,引入jitter采样方式,在保持随机采样优点的同时控制采样间隔.数值试验表明,基于曲波变换的重建效果优于傅里叶变换,jitter欠采样的重建效果优于随机欠采样,最后将该技术应用于实际地震勘探资料,获得较好的应用效果.

关 键 词:曲波变换  jitter采样  压缩感知  数据重建  凸集投影  
收稿时间:2012-03-21

Seismic data reconstruction based on jittered sampling and curvelet transform
ZHANG Hua , CHEN Xiao-Hong.Seismic data reconstruction based on jittered sampling and curvelet transform[J].Chinese Journal of Geophysics,2013,56(5):1637-1649.
Authors:ZHANG Hua  CHEN Xiao-Hong
Institution:1. National Engineering Laboratory for Offshore Oil Exploration, China University of Petroleum, Beijing 102249, China; 2. Fundamental Science on Radioactive Geology and Exploration Technology Laboratory, East China Institute of Technology, Jiangxi Fuzhou 344000, China
Abstract:Traditional seismic data sampling must follow the Nyquist sampling theorem, while the field data acquisition can't meet the sampling theorem due to missing traces or exploration cost limit, so there exits data reconstruction problem. In this paper, based on the theory of compressed sensing, we render coherent aliases of regular under-sampling into harmless incoherent random noise using the random under-sampling, effectively turning the reconstruction problem into a much simpler de-noising problem. We introduce the Projections Onto Convex Sets (POCS) algorithm during the process of reconstruction, choosing the square root exponentially decreased threshold, constructing a curvelet-based recovery strategy of 3D seismic data. At the same time, aiming at the deficiency of simple random under-sampling, we introduce the jittered under-sampling, it shares the benefits of random sampling and controls the maximum gap size. Experiments show that reconstruction effect based on curvelet is better than FFT transform and jittered under-sampling is better than random under-sampling. At last, we apply this technology into practical seismic data and obtain a good application.
Keywords:Curvelet transform  Jittered sampling  Compressive sensing  Data reconstruction  Projection onto Convex Sets (POCS)
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