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Design and implementation of a non-destructive defect detection technique based on UWB-SAR imaging

机译:基于UWB-SAR成像的无损缺陷检测技术的设计与实现

摘要

In the last twenty years aerospace and automotive industries started working widely with composite materials, which are not easy to test using classic Non-Destructive Inspection (NDI) techniques. Pairwise, the development of safety regulations sets higher and higher standards for the qualification and certification of those materials.udIn this thesis a new concept of a Non-Destructive defect detection technique is proposed, based on Ultrawide-Band (UWB) Synthetic Aperture Radar (SAR) imaging. Similar SAR methods are yet applied either in minefield [22] and head stroke [14] detection. Moreover feasibility studies have already demonstrated the validity of defect detection by means of UWB radars [12, 13].udThe system was designed using a cheap commercial off-the-shelf radar device by Novelda and several tests of the developed system have been performed both on metallic specimen (aluminum plate) and on composite coupon (carbon fiber).udThe obtained results confirm the feasibility of the method and highlight the good performance of the developed system considered the radar resolution. In particular, the system is capable of discerning healthy coupons from damaged ones, and correctly reconstruct the reflectivity image of the tested defects, namely a 8 x 8 mm square bulge and a 5 mm drilled holes on metal specimen and a 5 mm drilled hole on composite coupon.
机译:在过去的二十年中,航空航天和汽车行业开始广泛地使用复合材料,而复合材料很难使用经典的无损检测(NDI)技术进行测试。两方面,安全法规的制定为这些材料的鉴定和认证设定了越来越高的标准。 ud本文提出了一种基于超宽带(UWB)合成孔径雷达的无损缺陷检测技术的新概念。 (SAR)成像。在雷场[22]和头部中风[14]检测中也应用了类似的SAR方法。此外,可行性研究已经证明了通过UWB雷达进行缺陷检测的有效性[12,13]。 ud该系统是由Novelda使用廉价的现成商用雷达设备设计的,并且已经对该开发的系统进行了多次测试在金属样品(铝板上)和复合试样(碳纤维)上。 ud获得的结果证实了该方法的可行性,并突出了考虑雷达分辨率的已开发系统的良好性能。尤其是,该系统能够从损坏的试样中识别出健康的试样,并正确地重建测试缺陷的反射率图像,即在金属试样上有一个8 x 8 mm的方形凸起和一个5 mm的钻孔,在一个试样上有一个5 mm的钻孔。复合优惠券。

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    Gai Igor;

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