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Vibration component separation by iteratively using stochastic resonance with different frequency-scale ratios

机译:通过迭代使用具有不同频率比例的随机共振来分离振动分量

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摘要

It is well-known that stochastic resonance (SR) is mainly used for signal denoising and weak signal detection. In this paper, we firstly find the frequency range selection characteristic (filtering characteristic) of re-scaling frequency SR (RFSR) caused by the driving frequency limitation of bistable SR. It then follows that a novel approach to separate vibration components with different frequencies by iteratively using SR is explored. The frequencies of most vibration signals exceed the driving frequency limitation, thus by use of different frequency-scale ratios, the vibration signals with different frequency range can be extracted by RFSR. Firstly, a small frequency-scale ratio is used to obtain the vibration signal with a narrow frequency range, i.e. low frequency vibration. As the output of SR may have a phase lag, a simple phase-shift correction method is proposed to improve the accuracy of signal component separation. The phase-shift corrected signal of RFSR output is separated from the original vibration signal and the residue is treated as the new vibration signal. Then, increasing the frequency-scale ratio according to a searching algorithm, the vibration signal with higher frequency can be obtained by RFSR. Through this iterative process, several harmohic vibration components can be separated from the original noisy vibration signal. The proposed method, empirical mode decomposition (EMD) and Hilbert vibration decomposition (HVD) are respectively applied to analyzing a simulated vibration signal and extracting the fault feature of a rotor system. The contrastive results show that this proposed method has good frequency resolution and can successfully separate monocomponent harmonic signals from a strongly noisy multicomponent harmonic vibration signal while EMD and HVD cannot. (C) 2016 Elsevier Ltd. All rights reserved.
机译:众所周知,随机共振(SR)主要用于信号降噪和弱信号检测。在本文中,我们首先找到由双稳态SR的驱动频率限制引起的重缩放频率SR(RFSR)的频率范围选择特性(滤波特性)。然后得出结论,探索了一种通过迭代使用SR分离具有不同频率的振动分量的新颖方法。大多数振动信号的频率超过了驱动频率限制,因此通过使用不同的频率比例,可以通过RFSR提取具有不同频率范围的振动信号。首先,使用较小的频率比例来获得具有窄频率范围的振动信号,即低频振动。由于SR的输出可能存在相位滞后,因此提出了一种简单的相移校正方法来提高信号分量分离的精度。 RFSR输出的经相移校正的信号与原始振动信号分离,残留物被视为新的振动信号。然后,根据搜索算法增加频率比例比,可以通过RFSR获得更高频率的振动信号。通过此迭代过程,可以将几个谐波振动分量与原始噪声振动信号分开。该方法分别采用经验模态分解(EMD)和希尔伯特振动分解(HVD)来分析模拟的振动信号并提取转子系统的故障特征。对比结果表明,该方法具有良好的频率分辨率,可以成功地从强噪声的多分量谐波振动信号中分离出单分量谐波信号,而EMD和HVD则不能。 (C)2016 Elsevier Ltd.保留所有权利。

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