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Wavelet Network Approach for Structural Damage Identification Using Guided Ultrasonic Waves

机译:基于导波的小波网络识别结构损伤

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摘要

An appropriate wavelet network (WN) approach is introduced for detecting damage location and severity of structures based on measured guided ultrasonic wave (GUW) signals. An algorithm for establishing a multiple-input multiple-output fixed grid wavelet network (FGWN) is proposed. This algorithm consists of three main stages: 1) formation of wavelet latticel; 2) formation of wavelet matrix; and 3) optimizing the wavelet structure by means of orthogonal least square algorithm. Three damage-sensitive features are extracted from the GUW signals: 1) time of flight; 2) normalized damage wave amplitude; and 3) normalized damage wave area. These features are considered as the FGWN inputs and the damage location and severity are estimated. The established FGWN is used for identifying damage location and severity in a structural beam. The beam is investigated and simulated in different damaged conditions. Computed finite element method (FEM) simulation signals are used for training the FGWN. Some other FEM simulation signals, as well as measured experimental ones are used for testing. The proposed damage identification method is compared with three artificial neural network (ANN)-based algorithms. In addition to some other benefits of the proposed WN-based algorithm over ANN-based methods discussed in this paper, the results show that our approach performs better in both damage location and severity detections than other methods.
机译:引入了一种适当的小波网络(WN)方法,用于基于测量的引导超声波(GUW)信号来检测结构的损坏位置和严重程度。提出了一种建立多输入多输出固定网格小波网络(FGWN)的算法。该算法包括三个主要阶段:1)小波格的形成; 2)小波矩阵的形成; 3)通过正交最小二乘算法优化小波结构。从GUW信号中提取了三个对伤害敏感的特征:1)飞行时间; 2)归一化损伤波幅值; 3)归一化损伤波面积。这些特征被视为FGWN输入,并且估计了损​​坏的位置和严重程度。已建立的FGWN用于识别结构梁中的损坏位置和严重程度。在不同的损坏条件下对光束进行研究和模拟。计算有限元方法(FEM)仿真信号用于训练FGWN。其他一些FEM仿真信号以及测量的实验信号也用于测试。将提出的损伤识别方法与基于三种人工神经网络的算法进行了比较。除了本文讨论的基于WN的算法比基于ANN的方法还有其他好处外,结果还表明,与其他方法相比,我们的方法在损伤位置和严重性检测方面表现更好。

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