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Guided Wave-Convolutional Neural Network Based Fatigue Crack Diagnosis of Aircraft Structures

机译:基于导波-卷积神经网络的飞机结构疲劳裂纹诊断

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摘要

Fatigue crack diagnosis (FCD) is of great significance for ensuring safe operation, prolonging service time and reducing maintenance cost in aircrafts and many other safety-critical systems. As a promising method, the guided wave (GW)-based structural health monitoring method has been widely investigated for FCD. However, reliable FCD still meets challenges, because uncertainties in real engineering applications usually cause serious change both to the crack propagation itself and GW monitoring signals. As one of deep learning methods, convolutional neural network (CNN) owns the ability of fusing a large amount of data, extracting high-level feature expressions related to classification, which provides a potential new technology to be applied in the GW-structural health monitoring method for crack evaluation. To address the influence of dispersion on reliable FCD, in this paper, a GW-CNN based FCD method is proposed. In this method, multiple damage indexes (DIs) from multiple GW exciting-acquisition channels are extracted. A CNN is designed and trained to further extract high-level features from the multiple DIs and implement feature fusion for crack evaluation. Fatigue tests on a typical kind of aircraft structure are performed to validate the proposed method. The results show that the proposed method can effectively reduce the influence of uncertainties on FCD, which is promising for real engineering applications.
机译:疲劳裂纹诊断(FCD)对于确保飞机和许多其他对安全至关重要的系统的安全运行,延长服务时间并降低维护成本具有重要意义。作为一种有前途的方法,基于导波(GW)的结构健康监测方法已被广泛用于FCD。但是,可靠的FCD仍然面临挑战,因为实际工程应用中的不确定性通常会引起裂纹扩展本身和GW监测信号的严重变化。卷积神经网络(CNN)作为深度学习方法之一,具有融合大量数据,提取与分类相关的高级特征表达式的能力,为GW结构健康监测提供了潜在的新技术裂纹评估方法。为了解决色散对可靠FCD的影响,本文提出了一种基于GW-CNN的FCD方法。在这种方法中,从多个GW激励获取通道中提取多个损伤指数(DI)。 CNN经过设计和培训,可以从多个DI中进一步提取高级特征,并实现特征融合以进行裂纹评估。对典型的飞机结构进行疲劳测试以验证所提出的方法。结果表明,该方法可以有效减少不确定性对FCD的影响,对实际工程应用具有广阔的前景。

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