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Statistical Properties and Applications of Empirical Mode Decomposition

机译:经验模态分解的统计性质及应用

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摘要

Signal analysis is key to extracting information buried in noise. The decomposition of signal is a data analysis tool for determining the underlying physical components of a processed data set. However, conventional signal decomposition approaches such as wavelet analysis, Wagner-Ville, and various short-time Fourier spectrograms are inadequate to process real world signals. Moreover, most of the given techniques require emph{a prior} knowledge of the processed signal, to select the proper decomposition basis, which makes them improper for a wide range of practical applications. Empirical Mode Decomposition (EMD) is a non-parametric and adaptive basis driver that is capable of breaking-down non-linear, non-stationary signals into an intrinsic and finite components called Intrinsic Mode Functions (IMF). In addition, EMD approximates a dyadic filter that isolates high frequency components, e.g. noise, in higher index IMFs. Despite of being widely used in different applications, EMD is an ad hoc solution. The adaptive performance of EMD comes at the expense of formulating a theoretical base. Therefore, numerical analysis is usually adopted in literature to interpret the behavior.;This dissertation involves investigating statistical properties of EMD and utilizing the outcome to enhance the performance of signal de-noising and spectrum sensing systems. The novel contributions can be broadly summarized in three categories: a statistical analysis of the probability distributions of the IMFs and a suggestion of Generalized Gaussian distribution (GGD) as a best fit distribution; a de-noising scheme based on a null-hypothesis of IMFs utilizing the unique filter behavior of EMD; and a novel noise estimation approach that is used to shift semi-blind spectrum sensing techniques into fully-blind ones based on the first IMF. These contributions are justified statistically and analytically and include comparison with other state of art techniques.
机译:信号分析是提取隐藏在噪声中的信息的关键。信号分解是一种数据分析工具,用于确定已处理数据集的基础物理组件。但是,常规的信号分解方法(例如小波分析,Wagner-Ville和各种短时傅立叶频谱图)不足以处理现实世界的信号。此外,大多数给定的技术要求对处理后的信号有先验知识,以选择适当的分解基础,这使其不适用于广泛的实际应用。经验模式分解(EMD)是一种非参数自适应基础驱动器,能够将非线性,非平稳信号分解为称为本征模式函数(IMF)的本征和有限分量。此外,EMD近似于隔离高频成分(例如,高指数IMF中的噪声。尽管EMD被广泛用于不同的应用程序中,但它是一个临时解决方案。 EMD的自适应性能是以建立理论基础为代价的。因此,文献中通常采用数值分析来解释其行为。本论文涉及调查EMD的统计特性,并利用结果来增强信号降噪和频谱感测系统的性能。新的贡献可以概括为三类:对IMF概率分布的统计分析,以及作为最佳拟合的广义高斯分布(GGD)的建议。一种基于IMF零假设的利用EMD独特的滤波器行为的去噪方案;以及一种新颖的噪声估计方法,该方法用于基于第一个IMF将半盲频谱感测技术转换为全盲技术。这些贡献在统计和分析上是合理的,并且包括与其他最新技术水平的比较。

著录项

  • 作者

    Al-Badrawi, Mahdi H.;

  • 作者单位

    University of New Hampshire.;

  • 授予单位 University of New Hampshire.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 100 p.
  • 总页数 100
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:19

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