Detection of weld defects using ultrasonic-guided waves based on matching pursuit and density peak clustering

Author:

Mao Hanling12ORCID,Ren Jiaming1,Tang Yan1,Mao Hanying3,Chen Yun1,Yi Xiaoxu1,Huang Zhenfeng12,Li Xinxin12

Affiliation:

1. School of Mechanical Engineering, Guangxi University, China

2. Guangxi Key Lab of Manufacturing System and Advanced Manufacturing Technology, China

3. School of Mechanical and Transportation Engineering, Guangxi University of Science and Technology, China

Abstract

Due to the fish scale surface of the weld seam, the guided wave dispersion is intensified, resulting in serious mode aliasing problem of the detected signal. It is difficult to analyze defect echo signal and locate defect accurately. To solve this problem, a new method of ultrasonic guided wave detection is proposed for weld defects based on matching pursuit and density peak clustering. First, according to the characteristics of the guided wave echo signal, a matching pursuit algorithm based on Morlet wavelet dictionary is established. The time-frequency analysis and parameter analysis of the obtained wavelet atoms are carried out to realize the modal separation and identification of the guided wave signal. Then, the similarity weight is introduced into the density peak algorithm to cluster the atoms obtained by sparse decomposition. The obtained clustering center is used to locate the weld defect. The validity of the method is proved by simulation and experiment. Finally, the experimental results show that the positioning error is 0.261% when the proposed method is used to detect the weld defects of 3-mm wide steel plate.

Funder

Natural Science Foundation of Guangxi Province

Science and Technology Base and Talents Special Project of Guangxi Province

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Instrumentation

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