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A DNN-based Image Retrieval Approach for Detection of Defective Area in Carbon Fiber Reinforced Polymers through LDV Data

机译:基于LDN数据的基于DNN的图像检索方法,用于检测碳纤维增强聚合物中的缺陷区域

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Carbon fiber reinforced polymer (CFRP) materials, due to their specific strength and high consistency against erosion and corrosion, are widely used in industrial applications and high-tech engineering structures. However, there are also disadvantages: e.g. they are prone to different kinds of internal defects which could jeopardize the structural integrity of the CFRP material and therefore early detection of such defects can be an important task. Recently, local defect resonance (LDR), which is a subcategory of ultrasonic nondestructive testing, has been successfully used to solve this issue. However, the drawback of utilizing this technique is that the frequency at which the LDR occurs must be known. Further, the LDR-based technique has difficulty in assessing deep defects. In this paper, deep neural network (DNN) methodology is employed to remove this limitation and to acquire a better defect image retrieval process and also to achieve a model for the approximate depth estimation of such defects. In these regards, two types of defects called flat bottom holes (FBH) and barely visible impact damage (BVID) which are made in two CFRP coupons are used to evaluate the ability of the proposed method. Then, these two CFRPs are excited with a piezoelectric patch, and their corresponding laser Doppler vibrometry (LDV) response is collected through a scanning laser Doppler vibrometer (SLDV). Eventually, the superiority of our DNN-based approach is evaluated in comparison with other well-known classification methodologies.
机译:碳纤维增强聚合物(CFRP)材料因其特定的强度以及对侵蚀和腐蚀的高一致性而被广泛用于工业应用和高科技工程结构中。但是,它也有一些缺点:它们容易出现各种内部缺陷,可能会损坏CFRP材料的结构完整性,因此尽早发现此类缺陷可能是一项重要任务。最近,作为超声非破坏性测试的子类别的局部缺陷共振(LDR)已成功用于解决此问题。但是,利用这种技术的缺点是必须知道发生LDR的频率。此外,基于LDR的技术难以评估深层缺陷。在本文中,采用深度神经网络(DNN)方法来消除此限制,并获得更好的缺陷图像检索过程,并为此类缺陷的近似深度估计建立模型。在这些方面,使用两种CFRP试样制成的两种类型的缺陷,称为平底孔(FBH)和几乎看不见的冲击损伤(BVID),来评估所提出方法的能力。然后,这两个CFRP用压电膜片激励,并通过扫描激光多普勒振动计(SLDV)收集它们相应的激光多普勒振动计(LDV)响应。最终,与其他众所周知的分类方法相比,我们基于DNN的方法的优越性得到了评估。

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