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基于独立分量分析的多次波盲分离方法研究
A method of multiple blind separation based on ICA
【摘要】 独立分量分析是一种以高阶统计量为基础的信号处理方法,它以分离非高斯混合信号为目标,建立起各个分量的统计独立性判据.在传统方法中,多次波压制技术是基于二阶统计量,求得最优解得基本前提是一次波和多次波正交.本文将ICA应用于多次波问题,在对地震数据基本构成作了分析的基础上,建立起多次波盲分离的ICA模型,并对其假设条件和固有不确定问题进行了详细的研究分析,然后给出了基于负熵的快速ICA算法并加以改进,最后进行仿真实验.试验结果表明,该方法能有效地压制地震资料中的多次波信息,较好的恢复一次波信息.
【Abstract】 ICA is a new multi-dimensional signal processing method based on high-order statistics,which is used to separate non-Gaussian mixed signal,and set up a criterion to decide whether all the components are statistically independent.In the traditional method,multiple suppression technique is based on second-order statistics,which requires that signal primary reflection and multiple must be orthogonal for optimality solution.In this paper,ICA was applied to the multiple suppression issue.We sets up the ICA model of multiple blind separation after analyzing the basic composition of seismic data,and give a detailed analysis of the assumptions and inherent uncertainties of the issue.Then we present the fast ICA algorithm based on negentropy and improve it.Experimental results show that this method can attenuate multiple effectively and recover signal reflection preferably.
【Key words】 independent component analysis; multiple attenuation; high-order statistical; FastICA; negentropy;
- 【文献出处】 地球物理学进展 ,Progress in Geophysics , 编辑部邮箱 ,2010年03期
- 【分类号】P631.4
- 【被引频次】13
- 【下载频次】28