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Monitoring of multi-bolt connection looseness using a novel vibro-acoustic method

机译:用新型振动声法监测多螺栓连接松动

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摘要

Bolted connections are prone to losing their preloads with the increasing service life, thus inducing engineering accidents and economic losses in industries. Therefore, it is important to detect bolt loosening, while current structural health monitoring methods mainly focus on single-bolt joints, whose applications in industries are limited. Thus, in this paper, a novel vibro-acoustic modulation (VAM) method, is developed to detect looseness of the multi-bolt connection. Compared to traditional VAM, the proposed method uses linear swept sine waves for both low-frequency and high-frequency excitations, which avoids a priori knowledge of the structure. Moreover, the orthogonal matching pursuit method is applied to compress original modulated signals and exclude redundant features. Then, a new entropy, namely the Gnome entropy with acronym gEn, is proposed in this paper. According to simulation analysis, the gEn has better anti-noise capacity and fewer parameters than traditional entropy. Finally, after quantifying the dynamic characteristics of compressed signals to obtain feature sets through the gEn, we feed feature sets into a random forest classifier and achieve looseness detection of the multi-bolt connection. Moreover, the proposed method in this paper has great potential to detect other structural damages and provides guidance for further investigations on the VAM method.
机译:螺栓连接易于失去预加载,随着使用寿命的增加,从而诱导工业事故和行业经济损失。因此,检测螺栓松动是重要的,而目前的结构健康监测方法主要关注单螺栓接头,其在行业的应用有限。因此,在本文中,开发了一种新颖的振动声调制(VAM)方法以检测多螺栓连接的松动。与传统的VAM相比,所提出的方法使用线性扫描正弦波进行低​​频和高频激发,这避免了该结构的先验知识。此外,应用正交匹配方法以压缩原始调制信号并排除冗余功能。然后,在本文中提出了一种新的熵,即侏儒熵与缩略词Gen。根据仿真分析,GEN具有比传统熵更好的抗噪声容量和更少的参数。最后,在量化压缩信号的动态特性之后通过该Gen获得特征集,我们将特征设置为随机林分类器并实现了多螺栓连接的松动检测。此外,本文中所提出的方法具有较大的潜力,可以检测其他结构损害,并为进一步调查VAM方法提供指导。

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