论文标题
基于Chirplet转换的模式检索方法,用于具有交叉瞬时频率的多组分信号
A Chirplet Transform-based Mode Retrieval Method for Multicomponent Signals with Crossover Instantaneous Frequencies
论文作者
论文摘要
在自然界和工程领域,收购的信号通常受到多个复杂因素的影响,并以多组分非组织模式出现。在这种情况下,有必要将这些信号分为有限数量的单一组件,以表示源自源信号的内在模式和基本动力学。在本文中,我们考虑了具有瞬时频率(IFS)的多组分信号的模式检索,这意味着信号的某些成分在时频域中重叠。我们使用Chirpet Transform(CT)代表三维时间,频率和CHIRP速率的多组分信号,并引入了基于CT的信号分离方案(CT3S)来检索模式。此外,我们分析了使用此方案的估计和组件恢复的误差界限。我们还提出了沿着某些特定时频线的匹配过滤器,相对于CHIRP速率,将非平稳信号进一步分离,并在CT的三维空间中更加集中。此外,基于在任何当地时期的线性鸣叫的源信号的近似,我们提出了一种创新的信号重建算法,称为该组 滤波器匹配的CT3S(GFCT3S)也同时考虑一组组件。 GFCT3S适用于具有交叉IF的信号。当不同组件的IFS曲线不是交叉的,而是快速变化且接近另一个和另一个时,它也会减少组件恢复误差。关于合成和真实信号的数值实验表明,与经验模式分解,同步转换和其他方法相比,我们的方法在信号分离中更准确和一致
In nature and engineering world, the acquired signals are usually affected by multiple complicated factors and appear as multicomponent nonstationary modes. In such and many other situations, it is necessary to separate these signals into a finite number of monocomponents to represent the intrinsic modes and underlying dynamics implicated in the source signals. In this paper, we consider the mode retrieval of a multicomponent signal which has crossing instantaneous frequencies (IFs), meaning that some of the components of the signal overlap in the time-frequency domain. We use the chirplet transform (CT) to represent a multicomponent signal in the three-dimensional space of time, frequency and chirp rate and introduce a CT-based signal separation scheme (CT3S) to retrieve modes. In addition, we analyze the error bounds for IF estimation and component recovery with this scheme. We also propose a matched-filter along certain specific time-frequency lines with respect to the chirp rate to make nonstationary signals be further separated and more concentrated in the three-dimensional space of CT. Furthermore, based on the approximation of source signals with linear chirps at any local time, we propose an innovative signal reconstruction algorithm, called the group filter-matched CT3S (GFCT3S), which also takes a group of components into consideration simultaneously. GFCT3S is suitable for signals with crossing IFs. It also decreases component recovery errors when the IFs curves of different components are not crossover, but fast-varying and close to one and other. Numerical experiments on synthetic and real signals show our method is more accurate and consistent in signal separation than the empirical mode decomposition, synchrosqueezing transform, and other approaches