Vibration-based looseness identification of bolted structures via quasi-analytic wavelet packet and optimized large margin distribution machine

IF 5.7 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Wenzhan Yang, Zhousuo Zhang, Xu Chen
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引用次数: 0

Abstract

Bolted joints are the most widely utilized connection types in industries, and therein looseness identification of bolted structures is of great significance to guarantee structural reliability. In this article, a comprehensive study of bolt looseness identification under random excitation is presented. To fulfill this task, this research focuses on three prominent difficulties, including nonstationary signal processing, subtle feature extraction, and robust state classification. First, a novel filter bank structure of quasi-analytic dual-tree complex wavelet packet transform is constructed to analyze the measured vibration response signals, for purpose of capturing subtle feature information. Then, multiple features are extracted from subband signals to capture the variations of dynamic characteristics, and sensitive features are selected by Laplacian score to construct the low-dimensional feature set. Subsequently, a novel classifier with better generalization performance, named large margin distribution machine, is optimized with the wavelet kernel function and the whale optimization algorithm, in order to handle the intrinsic uncertainty related to the looseness states of bolted structures. After feeding the low-dimensional feature set, the proposed classifier is trained to identify looseness states of bolted structures. Finally, experiments of a two-bolt lapped beam under random excitation are conducted to verify the effectiveness of the proposed method, and two typical loading conditions (paired-bolt looseness and single-bolt looseness) are considered. Besides, the superiority of the proposed method is demonstrated by comparing with other analogical methods. This research can provide a promising implement in practical applications of bolt looseness identification under random excitation.
基于准解析小波包和优化大余量分布机的螺栓结构振动松动识别
螺栓连接是工业上应用最广泛的连接形式,其中螺栓结构的松动识别对保证结构可靠性具有重要意义。本文对随机激励下的螺栓松动识别进行了综合研究。为了完成这项任务,本研究重点研究了三个突出的困难,包括非平稳信号处理、细微特征提取和鲁棒状态分类。首先,构造了一种新的准解析对偶树复小波包变换滤波器组结构,用于分析测量的振动响应信号,以获取细微的特征信息。然后,从子带信号中提取多个特征以捕捉动态特性的变化,并通过拉普拉斯分数选择敏感特征来构建低维特征集。随后,利用小波核函数和whale优化算法对一种泛化性能较好的新型分类器——大裕度分布机进行了优化,以处理与螺栓结构松动状态相关的内在不确定性。在输入低维特征集后,训练所提出的分类器来识别螺栓结构的松动状态。最后,对随机激励下的双螺栓搭接梁进行了实验,验证了该方法的有效性,并考虑了两种典型的加载条件(双螺栓松动和单螺栓松动)。此外,通过与其他类比方法的比较,证明了该方法的优越性。该研究为随机激励下螺栓松动识别的实际应用提供了一个很有前途的实现途径。
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来源期刊
CiteScore
12.80
自引率
12.10%
发文量
181
审稿时长
4.8 months
期刊介绍: Structural Health Monitoring is an international peer reviewed journal that publishes the highest quality original research that contain theoretical, analytical, and experimental investigations that advance the body of knowledge and its application in the discipline of structural health monitoring.
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