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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Time-frequency synthesis analysis for complex signal of rotating machinery via variational mode manifold reinforcement learning
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Time-frequency synthesis analysis for complex signal of rotating machinery via variational mode manifold reinforcement learning

机译:通过变分模型歧管增强学习的旋转机械复合信号的时频合成分析

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摘要

The transient signal caused by localized fault in rotating machinery always contains complex modulation information with heavy background noise distributed, which brings much difficulties for fault feature identification in the application of rotating machinery fault diagnosis. Focusing on the sensitive feature extraction from these complex signals, this paper proposes a novel variational mode manifold reinforcement learning ((VMRL)-R-2) to adaptively construct time-frequency synthesis analysis for enhancement of transient features. First, a method of adaptive variational mode decomposition (VMD) is employed to divide the raw spectrum of the given signal into several sub-bands with different frequency modulation information. Second, an improved time-frequency manifold (ITFM) learning is introduced to gain the topological manifold structure from those sub-distributions in time-frequency domain. Then, a sound-enhanced signature of transient features on the whole time-frequency plane can be synthesized by combining those sub-TFMs from each modulated segment back to the corresponding frequency band. Finally, the time-frequency envelope spectrum for fault diagnosis is further obtained through statistically evaluating their amplitude distribution. Among them, short-frequency Fourier transform (SFFT) is introduced to transform local frequency bands into a series of TFDs which improves the computational efficiency of TFM learning. In this manner, the desired transient distribution on full time-frequency plane can be automatically reconstructed by (VMRL)-R-2 with manifold reinforced in a data-driven way. A simulation study and two experimental signals are both analyzed here, and fast spectral kurtosis and conventional VMD methods are also used to verify its effectiveness. Meanwhile, a quantitative analysis has been provided to further illustrate its superiority in the application of complex signal fault of rotating machinery.
机译:旋转机械局部故障引起的瞬态信号始终包含具有分布重的复杂调制信息,其在应用旋转机械故障诊断时为故障特征识别带来了很大的困难。本文专注于从这些复杂信号提取的敏感特征提取,提出了一种新颖的变分模式歧管增强学习((VMRL)-2),以适自构建时频合成分析以获得瞬态特征的增强。首先,采用自适应变分模式分解(VMD)的方法来将给定信号的原始谱除以具有不同频率调制信息的多个子带。其次,引入改进的时频歧管(ITFM)学习以获得从时频域中的那些子分布的拓扑歧形结构。然后,可以通过将来自每个调制段的那些子TFM组合回对应频带来合成整个时频平面上的瞬态特征的声音增强签名。最后,通过统计评估其振幅分布进一步获得用于故障诊断的时频包络谱。其中,引入了短频傅立叶变换(SFFT)以将局部频带转换为一系列TFD,这提高了TFM学习的计算效率。以这种方式,全时频率平面上所需的瞬态分布可以通过以数据驱动方式增强的歧管自动地重建(VMRL)-R-2。这里分析了模拟研究和两种实验信号,并且还用于验证其有效性的快速光谱峰值和传统的VMD方法。同时,已经提供了定量分析,以进一步说明其在旋转机械复杂信号故障的应用中的优越性。

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