论文标题
通过提取具有自适应时间变化参数的局部频率的直接信号分离
Direct Signal Separation Via Extraction of Local Frequencies with Adaptive Time-Varying Parameters
论文作者
论文摘要
可以作为信号表达的现实现象通常受许多因素影响,并以多组分模式出现。要理解和处理这种现象,“分裂和争议”可能是解决该问题的最常见策略。换句话说,将捕获的信号分解为信号组件,以处理每个组件要处理。不幸的是,对于非平稳振幅调制(AM-FM)组件的叠加的信号,“分裂和互动”策略必将失败,因为无法确保分解的组件对AM-FM的配方进行,这对于提取了其瞬时频率(如果是瞬时)和Amplities和Amplities和Amplities和Amplities(ias)。在本文中,我们提出了一种自适应信号分离操作(ASSO),以有效,准确地分离单渠道盲源多组分信号,通过引入一个随时间变化的参数,该参数可以在本地适应IFS并使用线性chirp(线性频率调制)信号以近似于每个时间的时间inters inters instant instant instant instant。我们基于线性CHIRP信号局部近似来得出更准确的组件恢复公式。此外,还提出了一种恢复方案以及脊检测方法,以一一提取信号组件,并为每个组件更新时间变化的参数。所提出的方法适用于工程实施,能够将复杂的信号分开为其组件或子信号,并直接重建信号趋势。提出了有关合成和现实信号的数值实验,以证明我们对先前尝试的改进。
Real-world phenomena that can be formulated as signals are often affected by a number of factors and appear as multi-component modes. To understand and process such phenomena, "divide-and-conquer" is probably the most common strategy to address the problem. In other words, the captured signal is decomposed into signal components for each individual component to be processed. Unfortunately, for signals that are superimposition of non-stationary amplitude-frequency modulated (AM-FM) components, the "divide-and-conquer" strategy is bound to fail, since there is no way to be sure that the decomposed components take on the AM-FM formulations which are necessary for the extraction of their instantaneous frequencies (IFs) and amplitudes (IAs). In this paper, we propose an adaptive signal separation operation (ASSO) for effective and accurate separation of a single-channel blind-source multi-component signal, via introducing a time-varying parameter that adapts locally to IFs and using linear chirp (linear frequency modulation) signals to approximate components at each time instant. We derive more accurate component recovery formulae based on the linear chirp signal local approximation. In addition, a recovery scheme, together with a ridge detection method, is also proposed to extract the signal components one by one, and the time-varying parameter is updated for each component. The proposed method is suitable for engineering implementation, being capable of separating complicated signals into their components or sub-signals and reconstructing the signal trend directly. Numerical experiments on synthetic and real-world signals are presented to demonstrate our improvement over the previous attempts.