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Identification of crack location and depth in a cantilever beam using a modular neural network approach

机译:使用模块化神经网络方法识别悬臂梁中的裂纹位置和深度

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In this paper, the flexural vibration in a cantilever beam having a transverse surface crack is considered. The modal frequency parameters are analytically computed for various crack locations and depths using a fracture mechanics based crack model. These computed modal frequencies are used to train a neural network to identify both the crack location and depth. The sensitivity of the modal frequencies to a crack increases when the crack is near the root and decreases as the crack moves to the free end of the cantilever beam. Because of the sensitive nature of this problem, a modular neural network approach is used. First, the crack location is identified with computed modal frequency parameters. Next, the crack depth is identified with computed modal frequency parameters and the identified crack location. A comparative study is made using the modular neural network architecture with two widely used neural networks, namely the multi-layer perceptron network and the radial basis function network. The proposed modular neural network method with a radial basis function network is found to perform better than the multi-layer perceptron network. In addition, the radial basis function network takes less computational time to train the network than the multi-layer perceptron network. This modular neural network architecture can be used as a non-destructive procedure for health monitoring of structures.
机译:在本文中,考虑了具有横向表面裂纹的悬臂梁的弯曲振动。使用基于断裂力学的裂纹模型,可以分析各种裂纹位置和深度的模态频率参数。这些计算出的模态频率用于训练神经网络,以识别裂纹位置和深度。当裂纹靠近根部时,模态频率对裂纹的敏感度增加,并且随着裂纹移动到悬臂梁的自由端而减小。由于此问题的敏感性,因此使用了模块化神经网络方法。首先,用计算出的模态频率参数确定裂纹位置。接下来,利用计算出的模态频率参数和识别出的裂纹位置来识别裂纹深度。使用模块化神经网络体系结构和两个广泛使用的神经网络(即多层感知器网络和径向基函数网络)进行了比较研究。发现所提出的带有径向基函数网络的模块化神经网络方法的性能要优于多层感知器网络。另外,与多层感知器网络相比,径向基函数网络花费较少的计算时间来训练网络。这种模块化的神经网络体系结构可以用作结构健康监控的非破坏性过程。

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