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Time-frequency representation based on time-varying autoregressive model with applications to non-stationary rotor vibration analysis

机译:基于时变自回归模型的时频表示及其在非平稳转子振动分析中的应用

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摘要

A parametric time-frequency representation is presented based on time-varying autoregressive model (TVAR), followed by applications to non-stationary vibration signal processing. The identification of time-varying model coefficients and the determination of model order, are addressed by means of neural networks and genetic algorithms, respectively. Firstly, a simulated signal which mimic the rotor vibration during run-up stages was processed for a comparative study on TVAR and other non-parametric time-frequency representations such as Short Time Fourier Transform, Continuous Wavelet Transform, Empirical Mode Decomposition, Wigner-Ville Distribution and Choi-Williams Distribution, in terms of their resolutions, accuracy, cross term suppression as well as noise resistance. Secondly, TVAR was applied to analyse non-stationary vibration signals collected from a rotor test rig during run-up stages, with an aim to extract fault symptoms under non-stationary operating conditions. Simulation and experimental results demonstrate that TVAR is an effective solution to non-stationary signal analysis and has strong capability in signal time-frequency feature extraction.
机译:基于时变自回归模型(TVAR)提出了一种参数化的时频表示方法,然后将其应用于非平稳振动信号处理。时变模型系数的识别和模型阶数的确定分别通过神经网络和遗传算法解决。首先,处理模拟转子在启动阶段的振动的模拟信号,以进行TVAR和其他非参数时频表示的比较研究,例如短时傅立叶变换,连续小波变换,经验模式分解,Wigner-Ville分布和Choi-Williams分布,从其分辨率,准确性,跨项抑制以及抗噪声方面而言。其次,TVAR被用于分析在启动阶段从转子试验台收集到的非平稳振动信号,目的是在非平稳运行条件下提取故障症状。仿真和实验结果表明,TVAR是非平稳信号分析的有效解决方案,具有强大的信号时频特征提取能力。

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