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首页> 外文期刊>Mechanical systems and signal processing >Separation of multiple local-damage-related components from vibration data using Nonnegative Matrix Factorization and multichannel data fusion
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Separation of multiple local-damage-related components from vibration data using Nonnegative Matrix Factorization and multichannel data fusion

机译:使用非负矩阵分解和多通道数据融合,从振动数据分离多个局部损坏相关组件

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摘要

The problem of local damage detection in case of analyzing vibration signal from rotating machines is mostly related to the detection of periodic impulsive components. Depending on various features of the signal, this task can be relatively simple in some cases (e.g. for an impulsive component in the presence of Gaussian noise). However, in our case multiple impulsive components occupying with the overlapping frequency bands are present. For all components, the impulses can be periodic. In this article, authors present a novel methodology based on data fusion from multichannel vibration data from heavy-duty industrial gearbox operating in the driving station of a belt conveyor. The proposed method is based on the factorization of spectrograms using Generalized Hierarchical Alternating Least Squares Nonnegative Matrix Factorization with Beta-Divergence (later referred to as β-HALS NMF). Partial information obtained from the factorization is fused into a single data set for each impulsive component present in the signal. Finally, Griffin-Lim algorithm is used to estimate the complex phase layer of artificial spectrograms allowing to recover the near-perfect time series of each impulsive component extracted from the signal. This method has been tested on four-channel vibration data.
机译:在分析来自旋转机器的振动信号的情况下局部损伤检测的问题主要与周期性脉冲部件的检测有关。根据信号的各种特征,在某些情况下,该任务可以相对简单(例如,在存在高斯噪声的存在下脉冲部件)。然而,在我们的情况下,存在占用与重叠频带的多个脉冲组件。对于所有组分,脉冲可以是周期性的。在本文中,作者提出了一种基于来自在带式输送机驱动站运行的重型工业齿轮箱的多通道振动数据的数据融合的新方法。所提出的方法基于使用具有β发散的广义分层交替最小二乘非负化矩阵分解的谱图的分解(后面称为β-HALS NMF)。从分解中获得的部分信息被融合成用于信号中存在的每个脉冲组件的单个数据集。最后,使用Griffin-Lim算法估计人工谱图的复杂相层,允许从信号中提取的每个脉冲组分的近乎完美的时间序列恢复。该方法已经在四通道振动数据上进行了测试。

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