Enhancing Deep Hole Defects' Visibility in Ultrasonic Detection for Thick-Walled Polyethylene Pipes via Time-Frequency Energy Concentration
- Authors: Chen C.1, Hou H.2, Zhang S.1, Su M.1, Zhao Z.2, Jiao C.2
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Affiliations:
- University of Shanghai for Science and Technology
- Shanghai Institute of Technology
- Issue: No 2 (2025)
- Pages: 17-27
- Section: Acoustic methods
- URL: https://journals.rcsi.science/0130-3082/article/view/282247
- DOI: https://doi.org/10.31857/S0130308225020022
- ID: 282247
Cite item
Abstract
Ultrasonic testing of thick-walled polyethylene pipes is challenged by energy loss, resulting in weak echo signals from deep defects. To enhance the detection of these weak signals, a time-frequency energy concentration method is presented. The fractional adaptive superlet transform combines multiple wavelet transform results with distinct bandwidths through geometric averaging, providing superior time-frequency analysis capabilities than single wavelet transforms. However, its time-frequency representation exhibits the issue of instantaneous frequency deviation. The proposed method addresses the issue via instantaneous frequency-embedding, leading to improved accuracy in instantaneous frequency estimation. Numerical signal analysis reveals higher accuracy in instantaneous frequency estimation using this method, compared to other time-frequency processing methods. When applied to detecting deep defects in thick-walled polyethylene pipes, the method shows an 18.9% increase in weak signal enhancement capability compared to the continuous wavelet transform. Finally, the results demonstrate the method’s accuracy in clarifying instantaneous frequency changes and enhancing instantaneous amplitudes of weak signals, offering a promising approach for the detection of deep defects in thick-walled polyethylene pipes.
About the authors
Chaolei Chen
University of Shanghai for Science and Technology
Email: sumx@usst.edu.cn
China, 516, Jun Gong Road, Yangpu District, Shanghai, 200093
Huaishu Hou
Shanghai Institute of Technology
Author for correspondence.
Email: hhs927@126.com
China, 100, Haiquan Road, Fengxian District, Shanghai, 201418
Shiwei Zhang
University of Shanghai for Science and Technology
Email: sumx@usst.edu.cn
China, 516, Jun Gong Road, Yangpu District, Shanghai, 200093
Mingxu Su
University of Shanghai for Science and Technology
Email: sumx@usst.edu.cn
516, Jun Gong Road, Yangpu District, Shanghai, 200093
Zhifan Zhao
Shanghai Institute of Technology
Email: hhs927@126.com
100, Haiquan Road, Fengxian District, Shanghai, 201418
Chaofei Jiao
Shanghai Institute of Technology
Email: hhs927@126.com
China, 100, Haiquan Road, Fengxian District, Shanghai, 201418
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