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Multipoint Optimal Minimum Entropy Deconvolution and Convolution Fix: Application to vibration fault detection

机译:多点最优最小熵解卷积和卷积修正:在振动故障检测中的应用

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Minimum Entropy Deconvolution (MED) has been applied successfully to rotating machine fault detection from vibration data, however this method has limitations. A convolution adjustment to the MED definition and solution is proposed in this paper to address the discontinuity at the start of the signal - in some cases causing spurious impulses to be erroneously deconvolved. A problem with the MED solution is that it is an iterative selection process, and will not necessarily design an optimal filter for the posed problem. Additionally, the problem goal in MED prefers to deconvolve a single-impulse, while in rotating machine faults we expect one impulse-like vibration source per rotational period of the faulty element Maximum Correlated Kurtosis Deconvolution was proposed to address some of these problems, and although it solves the target goal of multiple periodic impulses, it is still an iterative non-optimal solution to the posed problem and only solves for a limited set of impulses in a row. Ideally, the problem goal should target an impulse train as the output goal, and should directly solve for the optimal filter in a non-iterative manner. To meet these goals, we propose a non-iterative deconvolution approach called Multipoint Optimal Minimum Entropy Deconvolution Adjusted (MOMEDA). MOMEDA proposes a deconvolution problem with an infinite impulse train as the goal and the optimal filter solution can be solved for directly. From experimental data on a gearbox with and without a gear tooth chip, we show that MOMEDA and its deconvolution spectrums according to the period between the impulses can be used to detect faults and study the health of rotating machine elements effectively.
机译:最小熵反卷积(MED)已成功应用于从振动数据中检测旋转机械故障,但是这种方法有局限性。本文提出了对MED定义和解决方案进行卷积调整的方法,以解决信号开始时的不连续性-在某些情况下会导致错误地消除杂散脉冲的卷积。 MED解决方案的问题在于,这是一个迭代选择过程,不一定会针对所提出的问题设计最佳滤波器。此外,MED中的问题目标倾向于对单脉冲解卷积,而在旋转机械故障中,我们预计每个有故障元素的旋转周期都应有一个类似于脉冲的振动源,提出了最大相关峰度反卷积来解决其中一些问题,尽管它解决了多个周期性脉冲的目标目标,仍然是对所提出问题的迭代非最优解决方案,并且只能连续求解一组有限的脉冲。理想情况下,问题目标应以脉冲序列为输出目标,并应以非迭代方式直接求解最优滤波器。为了实现这些目标,我们提出了一种非迭代的反卷积方法,称为多点最优最小熵反卷积调整(MOMEDA)。 MOMEDA提出了一个以无限脉冲序列为目标的反卷积问题,并且可以直接求解最佳滤波器解。从带或不带齿轮齿片的齿轮箱上的实验数据可以看出,MOMEDA及其根据脉冲之间的周期的反褶积谱可用于检测故障并有效地研究旋转机械元件的健康状况。

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