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Deep learning for defect characterization in composite laminates inspected by step-heating thermography

机译:通过阶梯加热热成像检查复合层压板缺陷表征的深度学习

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摘要

This paper presents a complete procedure for the non-destructive analysis of composite laminates, taking advantage of the step-heating infrared thermography and the latest developments of deep neural networks. One-dimensional temperature profiles of the target surface are collected in response to long heat pulses and individually feed a compact network made of convolutional filters, self-tuned to represent the signals in an equivalent feature space of improved discrimination. The resulting features are then classified to obtain the complete three-dimensional characterization of the properties of possible subsurface defects. Experimental validation is proposed to investigate a laminate of glass-fiber-reinforced polymer with several flat-bottom holes by changing the duration of the input heat pulses. This test produces surprisingly good results in the characterization of three classes of defects of increasing depth, including the most challenging at a depth of 6.38 mm, i.e. at the limit of applicability of the step-heating thermography. In the case of an excitation length of 180 s, the average balanced accuracy, precision, and recall are equal to 84.03%, 87.62%, and 82.43%, respectively. Moreover, a threshold operation on the classification scores further boosts the recall values of the class of the deepest defects from 53.87% to 82.41%. This enhancement of sensitivity suggests the applicability of the proposed procedure for the automatic inspection of composites structures in all application fields where safety is mandatory.
机译:本文提出了一种完整的复合材料层压板的完整程序,利用梯度加热红外热成像和深神经网络的最新发展。响应于长热脉冲而收集目标表面的一维温度分布,并且单独地进料由卷积滤波器制成的紧凑型网络,自调谐以表示改善辨别的等同特征空间中的信号。然后将产生的特征分类以获得可能的地下缺陷的性质的完整三维表征。提出了通过改变输入热脉冲的持续时间来研究具有多个平底孔的玻璃纤维增​​强聚合物的层压材料。该测试产生令人惊讶的良好结果,在增加深度的三类缺陷中,包括最具挑战性的深度为6.38mm,即在步进加热热成像的适用范围内。在激发长度为180秒的情况下,平均平衡精度,精度和召回分别等于84.03%,87.62%和82.43%。此外,对分类得分的阈值操作进一步提高了从53.87%至82.41%的最深缺陷的召回值的召回值。这种灵敏度的增强表明所提出的程序适用于在安全是强制性的所有应用领域中的复合材料结构的自动检查。

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