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Analytical Model Approximation for Defect Classification in Fiberglass Composites Inspected by Long-Pulse Thermography

机译:长脉冲热像仪检测玻璃纤维复合材料缺陷分类的解析模型近似

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This paper presents a complete pipeline for automatic detection and classification of defects within composite laminates inspected by active IR thermography. Specifically, long-pulse thermography is proposed for nondestructive evaluation of samples made of Glass Fiber Reinforced Polymer (GFRP). A model approximation based on exponential functions is used to achieve an efficient representation of temperature decays at the surface of the samples. At the end of the pipeline, several decision forests are implemented to process input features and label corresponding areas among three classes of interest: sound regions, surface defects, and in-depth discontinuities. Results prove that the proposed methodology performs with good accuracy also in case of inspection of GFRP samples tested by long-pulse thermography.
机译:本文提出了一种完整的管道,用于自动检测和分类由活性IR热成像检测的复合层压板内的缺陷。具体地,提出了长脉冲热成像用于非破坏性评估由玻璃纤维增​​强聚合物(GFRP)制成的样品。基于指数函数的模型近似用于在样品表面上实现温度衰减的有效表示。在管道末尾,实施了几个决策林以处理三类感兴趣的输入特征和标签对应区域:声音区域,表面缺陷和深入的不连续性。结果证明,如果考验由长脉冲热成像测试的GFRP样品的情况下,所提出的方法也具有良好的准确性。

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