论文标题
经验傅立叶分解:准确的自适应信号分解法
Empirical Fourier Decomposition: An Accurate Adaptive Signal Decomposition Method
论文作者
论文摘要
信号分解是一种有效的工具,可以帮助识别时间域信号中的模态信息。基于傅立叶理论开发了两种信号分解方法,包括经验小波变换(EWT)和傅立叶分解方法(FDM)。但是,EWT可能会遇到具有紧密间隔模式的信号的模式混合问题,而FDM的分解结果可能会遇到不一致问题。提出了一种精确的自适应信号分解方法,称为经验傅立叶分解(EFD),以解决这项工作中的问题。提出的EFD结合了改进的傅立叶谱分段技术和理想的滤波器库的用途。分割技术可以通过预先定义要分解的信号中的模式的数量来解决不一致问题,并且在理想的滤波器库中的滤波器功能没有过渡阶段,这可以解决模式混合问题。进行数值研究以研究EFD的准确性。结果表明,与EWT,FDM,变异模式分解和经验模式分解相比,EFD可以为具有多个非平稳模式的信号和具有紧密间隔模式的信号产生准确且一致的分解结果。还表明,EFD可以产生准确的时频表示结果,并且在比较方法中具有最高的计算效率。
Signal decomposition is an effective tool to assist the identification of modal information in time-domain signals. Two signal decomposition methods, including the empirical wavelet transform (EWT) and Fourier decomposition method (FDM), have been developed based on Fourier theory. However, the EWT can suffer from a mode mixing problem for signals with closely-spaced modes and decomposition results by FDM can suffer from an inconsistency problem. An accurate adaptive signal decomposition method, called the empirical Fourier decomposition (EFD), is proposed to solve the problems in this work. The proposed EFD combines the uses of an improved Fourier spectrum segmentation technique and an ideal filter bank. The segmentation technique can solve the inconsistency problem by predefining the number of modes in a signal to be decomposed and filter functions in the ideal filter bank have no transition phases, which can solve the mode mixing problem. Numerical investigations are conducted to study the accuracy of the EFD. It is shown that the EFD can yield accurate and consistent decomposition results for signals with multiple non-stationary modes and those with closely-spaced modes, compared with decomposition results by the EWT, FDM, variational mode decomposition and empirical mode decomposition. It is also shown that the EFD can yield accurate time-frequency representation results and it has the highest computational efficiency among the compared methods.