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Crack Identification by Artificial Neural Network

机译:人工神经网络裂缝识别

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In this paper, a most popular artificial neural network called the back propagation neural network (BPN) is employed to achieve an ideal on-line identification of the crack embedded in a composite plate. Different from the usual dynamic estimate, the parameters used for the present crack identification are the strains of static deformation. It is known that the crack effects are localized which may not be clearly reflected from the boundary information especially when the data i from static deformation only. To remedy this, we use data from multiple-loading modes in which the loading modes may include the opening, shearing and tearing modes. The results show that our method for crack identification is always stable and accurate no matter how far-away of the test data from its training set.
机译:本文采用了一种称为后传播神经网络(BPN)的最受欢迎的人工神经网络来实现嵌入复合板中的裂缝的理想在线识别。与通常的动态估计不同,用于当前裂纹识别的参数是静态变形的菌株。众所周知,裂缝效应是本地化的,其可能不会被从边界信息清晰地反映,特别是当数据I仅来自静态变形时。为了解决这个问题,我们使用来自多加载模式的数据,其中装载模式可以包括开口,剪切和撕裂模式。结果表明,无论从其训练集中的测试数据有多远,我们的裂纹识别方法始终稳定,准确。

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