Paper
5 November 2015 Multimode nondestructive detecting method for high-speed rail defects
Mingjian Sun, Xingzhen Cheng, Guangnan Wan, Ting Liu, Ying Fu, Yan Wang
Author Affiliations +
Proceedings Volume 9795, Selected Papers of the Photoelectronic Technology Committee Conferences held June–July 2015; 979513 (2015) https://doi.org/10.1117/12.2214419
Event: Selected Proceedings of the Photoelectronic Technology Committee Conferences held June-July 2015, 2015, Hefei, Suzhou, and Harbin, China
Abstract
It is very important to detect the surface defects of the high-speed rail for security concerns. A multimode detecting method, which integrates high resolution of optical image, high precision of photoacoustic detection and strong penetration of ultrasound detecting, is proposed for the rail defect detection. Utilizing the surface defect characteristics obtained from optical signal, the photoacoustic and ultrasound scanning region could be determined, and rail shallow and internal defect characteristics can be acquired subsequently. Eventually, fusing three modal signals mentioned above, the information of the entire rail defect, including type, extension trend and depth can be detected. It has been proved that the multimode method can improve the detecting efficiency, and enlarge the detection range in the meantime.
© (2015) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mingjian Sun, Xingzhen Cheng, Guangnan Wan, Ting Liu, Ying Fu, and Yan Wang "Multimode nondestructive detecting method for high-speed rail defects", Proc. SPIE 9795, Selected Papers of the Photoelectronic Technology Committee Conferences held June–July 2015, 979513 (5 November 2015); https://doi.org/10.1117/12.2214419
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KEYWORDS
Nondestructive evaluation

Ultrasonography

Signal detection

Ultrasonics

Defect detection

Photoacoustic spectroscopy

Acoustics

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