Microwave Nondestructive Testing for Defect Detection in Composites Based on K-Means Clustering Algorithm

被引:49
|
作者
Shrifan, Nawaf H. M. M. [1 ,2 ]
Jawad, Ghassan Nihad [3 ]
Isa, Nor Ashidi Mat [1 ]
Akbar, Muhammad Firdaus [1 ]
机构
[1] Univ Sains Malaysia, Sch Elect & Elect Engn, George Town 14300, Malaysia
[2] Univ Aden, Fac Oil & Minerals, Aden, Yemen
[3] Univ Baghdad, Dept Elect & Commun Engn, Baghdad 10071, Iraq
关键词
Microwave theory and techniques; Microwave imaging; Insulation; Inspection; Microwave measurement; Machine learning; Microwave radiometry; Unsupervised machine learning; k-means; microwave NDT; defect detection;
D O I
10.1109/ACCESS.2020.3048147
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Composite such as Glass Fibre Reinforced Polymer (GFRP) is increasingly used as insulation in many industrial applications such as the steel pipelines in the oil and gas industry. Due to ageing and cyclic operation, many hidden defects exist under insulation, such as corrosion and delamination. If these defects are not promptly detected and restored, the growth of defects causes a catastrophic loss. Therefore, an effective inspection technique using non-destructive testing (NDT) to detect the underneath defect is required. The ability of microwave signals to penetrate and interact with the inner structure within composites makes them a promising candidate for composite inspection. In the case of GFRP, the random patterns cause permittivity variations that influence the propagation of the microwave signals, which results in a blurred spatial image making the assessment of the material's state difficult. In this research, a novel microwave NDT technique is presented based on k-means unsupervised machine learning for defect detection in composites. At present, the defect evaluation using an unsupervised machine learning-based microwave NDT technique is not reported elsewhere. The unsupervised machine learning is employed to enhance the imaging efficiency and defect detection in GFRP. The technique is based on scanning the composite material with an open-ended rectangular waveguide operating from 18 to 26.5 GHz with 101 frequency points. The influence of the permittivity variations on the reflected coefficients due to the random patterns of GFRP is mitigated by measuring the mean of a set of the adjacent points at each operating frequency point using a small rectangular window. The measured data is converted to the time domain using a fast inverse Fourier transform (IFFT) to provide significant features and increase the signal resolution to 201-time steps. K-means algorithm is utilized to cluster the given features into the defect and defect-free regions in GFRP. The findings presented in this paper demonstrate the benefits of an unsupervised machine learning to detect a defect down to 1 mm, which is a considerable contribution over any existing defect inspection technique in composites.
引用
收藏
页码:4820 / 4828
页数:9
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