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Tapping and listening: a new approach to bolt looseness monitoring

机译:攻丝和听力:螺栓松散监测的一种新方法

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Bolted joints are among the most common building blocks used across different types of structures, and are often the key components that sew all other structural parts together. Monitoring and assessment of looseness in bolted structures is one of the most attractive topics in mechanical, aerospace, and civil engineering. This paper presents a new percussion-based non-destructive approach to determine the health condition of bolted joints with the help of machine learning. The proposed method is very similar to the percussive diagnostic techniques used in clinical examinations to diagnose the health of patients. Due to the different interfacial properties among the bolts, nuts and the host structure, bolted joints can generate unique sounds when it is excited by impacts, such as from tapping. Power spectrum density, as a signal feature, was used to recognize and classify recorded tapping data. A machine learning model using the decision tree method was employed to identify the bolt looseness level. Experiments demonstrated that the newly proposed method for bolt looseness detection is very easy to implement by 'listening to tapping' and the monitoring accuracy is very high. With the rapid in robotics, the proposed approach has great potential to be implemented with intimately weaving robotics and machine learning to produce a cyber-physical system that can automatically inspect and determine the health of a structure.
机译:螺栓连接是在不同类型的结构中使用的最常见的构建块之一,并且通常是将所有其他结构部件熔化在一起的关键部件。螺栓结构中的松动监测和评估是机械,航空航天和土木工程中最具吸引力的主题之一。本文提出了一种新的基于打击乐的非破坏性方法,以确定机器学习的螺栓接头的健康状况。所提出的方法非常类似于临床检查中使用的急性诊断技术,以诊断患者的健康状况。由于螺栓,螺母和宿主结构之间的不同界面性质,螺栓接头可以在通过冲击的冲击激发时产生独特的声音,例如从敲击。功率谱密度作为信号特征,用于识别和分类录制的攻丝数据。使用使用决策树方法的机器学习模型来识别螺栓松动水平。实验表明,通过“听力攻丝”来实现新的螺栓松动检测方法,监控精度非常高。随着机器人的迅速,所提出的方法具有很大的潜力,可以用紧密编织的机器人和机器学习来实施,以产生可以自动检查和确定结构的健康的网络物理系统。

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