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Prediction of Natural Frequency of Composite Plates with Non-canonical Shape Using Convolutional Neural Networks

机译:卷积神经网络预测非典型形状复合板的固有频率

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This work is focused on the application of convolutional neural networks (CNN) to predicting the natural frequency of composite plates with non-canonical form of plan under clamped boundary condition. For training and testing of the CNN model, a number of numerical experiments have been carried out using R-functions (RFM) and Ritz methods by varying the geometry of a multi-layered plate of symmetric layout. The plate is modeled using the refined theory of the first order, taking shear deformations in account. The input features to the CNN are chosen to represent the geometrical form of the plate. The results predicted by CNN are in a good agreement with the RFM modeling results. The convergence study of the CNN architecture is also provided.
机译:该工作专注于卷积神经网络(CNN)在夹紧边界条件下预测具有非规范形式的复合板的固有频率。为了训练和测试CNN模型,通过改变多层对称布局的多层板的几何形状,通过R函数(RFM)和RITZ方法进行了许多数值实验。使用精致的第一顺序理论建模板,考虑剪切变形。选择CNN的输入特征以表示板的几何形状。 CNN预测的结果与RFM建模结果一致。还提供了CNN架构的收敛研究。

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