Huang Norden E, Hu Kun, Yang Albert C C, Chang Hsing-Chih, Jia Deng, Liang Wei-Kuang, Yeh Jia Rong, Kao Chu-Lan, Juan Chi-Hung, Peng Chung Kang, Meijer Johanna H, Wang Yung-Hung, Long Steven R, Wu Zhauhua
Research Center for Adaptive Data Analysis, National Central University, Zhongli 32001, Taiwan, Republic of China
Medical Biodynamics Program, Division of Sleep Medicine, Brigham and Women's Hospital/Harvard Medical School, 221 Longwood Avenue, Boston, MA 02115, USA.
Philos Trans A Math Phys Eng Sci. 2016 Apr 13;374(2065):20150206. doi: 10.1098/rsta.2015.0206.
The Holo-Hilbert spectral analysis (HHSA) method is introduced to cure the deficiencies of traditional spectral analysis and to give a full informational representation of nonlinear and non-stationary data. It uses a nested empirical mode decomposition and Hilbert-Huang transform (HHT) approach to identify intrinsic amplitude and frequency modulations often present in nonlinear systems. Comparisons are first made with traditional spectrum analysis, which usually achieved its results through convolutional integral transforms based on additive expansions of an a priori determined basis, mostly under linear and stationary assumptions. Thus, for non-stationary processes, the best one could do historically was to use the time-frequency representations, in which the amplitude (or energy density) variation is still represented in terms of time. For nonlinear processes, the data can have both amplitude and frequency modulations (intra-mode and inter-mode) generated by two different mechanisms: linear additive or nonlinear multiplicative processes. As all existing spectral analysis methods are based on additive expansions, either a priori or adaptive, none of them could possibly represent the multiplicative processes. While the earlier adaptive HHT spectral analysis approach could accommodate the intra-wave nonlinearity quite remarkably, it remained that any inter-wave nonlinear multiplicative mechanisms that include cross-scale coupling and phase-lock modulations were left untreated. To resolve the multiplicative processes issue, additional dimensions in the spectrum result are needed to account for the variations in both the amplitude and frequency modulations simultaneously. HHSA accommodates all the processes: additive and multiplicative, intra-mode and inter-mode, stationary and non-stationary, linear and nonlinear interactions. The Holo prefix in HHSA denotes a multiple dimensional representation with both additive and multiplicative capabilities.
全希尔伯特谱分析(HHSA)方法被引入以弥补传统谱分析的不足,并对非线性和非平稳数据进行完整的信息表示。它采用嵌套经验模态分解和希尔伯特-黄变换(HHT)方法来识别非线性系统中经常出现的固有幅度和频率调制。首先将其与传统谱分析进行比较,传统谱分析通常基于先验确定基的加法展开通过卷积积分变换来获得结果,大多是在线性和平稳假设下。因此,对于非平稳过程,历史上所能做的最好的就是使用时频表示,其中幅度(或能量密度)变化仍用时域来表示。对于非线性过程,数据可能具有由两种不同机制产生的幅度和频率调制(模式内和模式间):线性加法或非线性乘法过程。由于所有现有的谱分析方法都是基于加法展开,无论是先验的还是自适应的,它们都无法表示乘法过程。虽然早期的自适应HHT谱分析方法能够相当显著地处理波内非线性,但仍然存在任何包括跨尺度耦合和锁相调制的波间非线性乘法机制未得到处理的情况。为了解决乘法过程问题,需要在谱结果中增加维度以同时考虑幅度和频率调制的变化。HHSA能够处理所有过程:加法和乘法、模式内和模式间、平稳和非平稳、线性和非线性相互作用。HHSA中的“全”前缀表示具有加法和乘法能力的多维表示。