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Nonlinear and adaptive undecimated hierarchical multiresolution analysis for real valued discrete time signals via empirical mode decomposition approach

机译:实值离散时间信号的非线性自适应非抽取分层多分辨率分析,通过经验模式分解方法

摘要

Abstract Hierarchical multiresolution analysis is an important tool for the analysis of signals. Since this multiresolution representation provides a pyramid like framework for representing signals, it can extract signal information effectively via levels by levels. On the other hand, a signal can be nonlinearly and adaptively represented as a sum of intrinsic mode functions (IMFs) via the empirical mode decomposition (EMD) algorithm. Nevertheless, as the IMFs are obtained only when the EMD algorithm converges, no further iterative sifting process will be performed directly when the EMD algorithm is applied to an IMF. As a result, the same IMF will be resulted and further level decompositions of the IMFs cannot be obtained directly by the EMD algorithm. In other words, the hierarchical multiresolution analysis cannot be performed via the EMD algorithm directly. This paper is to address this issue by performing a nonlinear and adaptive hierarchical multiresolution analysis based on the EMD algorithm via a frequency domain approach. In the beginning, an IMF is expressed in the frequency domain by applying discrete Fourier transform (DFT) to it. Next, zeros are inserted to the DFT sequence and a conjugate symmetric zero padded DFT sequence is obtained. Then, inverse discrete Fourier transform (IDFT) is applied to the zero padded DFT sequence and a new signal expressed in the time domain is obtained. Actually, the next level IMFs can be obtained by applying the EMD algorithm to this signal. However, the lengths of these next level IMFs are increased. To reduce these lengths, first DFT is applied to each next level IMF. Second, the DFT coefficients of each next level IMF at the positions where the zeros are inserted before are removed. Finally, by applying IDFT to the shorten DFT sequence of each next level IMF, the final set of next level IMFs are obtained. It is shown in this paper that the original IMF can be perfectly reconstructed. Moreover, computer numerical simulation results show that our proposed method can reach a component with less number of levels of decomposition compared to that of the conventional linear and nonadaptive wavelets and filter bank approaches. Also, as no filter is involved in our proposed method, there is no spectral leakage in various levels of decomposition introduced by our proposed method. Whereas there could be some significant leakage components in the various levels of decomposition introduced by the wavelets and filter bank approaches.
机译:摘要分层多分辨率分析是信号分析的重要工具。由于此多分辨率表示提供了一个金字塔状的框架来表示信号,因此它可以逐级有效地提取信号信息。另一方面,可以通过经验模式分解(EMD)算法将信号非线性和自适应地表示为固有模式函数(IMF)的总和。然而,由于仅当EMD算法收敛时才获得IMF,因此当将EMD算法应用于IMF时,将不会直接执行进一步的迭代筛选过程。结果,将产生相同的IMF,并且无法通过EMD算法直接获得IMF的进一步级别分解。换句话说,不能通过EMD算法直接执行分层多分辨率分析。本文将通过基于EMD算法的频域方法执行非线性和自适应分层多分辨率分析来解决此问题。首先,通过在频域中应用离散傅里叶变换(DFT)来表达IMF。接下来,将零插入DFT序列中,并获得共轭对称零填充DFT序列。然后,将离散傅立叶逆变换(IDFT)应用于零填充DFT序列,并获得在时域表示的新信号。实际上,可以通过将EMD算法应用于此信号来获得下一级IMF。但是,这些下一级IMF的长度增加了。为了减少这些长度,首先将DFT应用于每个下一级IMF。第二,去除之前插入零的位置处的每个下一级IMF的DFT系数。最后,通过将IDFT应用于每个下一级IMF的缩短DFT序列,可以获得下一组IMF的最终集合。本文表明,可以完美地重建原始的IMF。此外,计算机数值模拟结果表明,与传统的线性和非自适应小波和滤波器组方法相比,我们提出的方法可以达到分解次数更少的组件。而且,由于我们的方法没有涉及滤波器,因此在我们的方法引入的各种分解级别中也没有频谱泄漏。然而,在小波和滤波器组方法引入的各种分解级别中,可能存在一些显着的泄漏分量。

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