Application of RBF Neural Network and Finite Element Analysis to Solve the Inverse Problem of Defect Identification

T. Hacib, M. Mekideche, N. Ferkha
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Abstract

This paper presents an approach which is based on the use of radial basis function (RBF) neural network and finite element analysis to solve the inverse problem of defect identification. The approach is used to identify unknown defects in metallic walls. The methodology used in this study consists in the simulation of a large number of defects in a metallic wall, using the finite element method (FEM). Both variations in with and height of the defects are considered. Then the obtained results are used to generate a set of vectors for the training of a RBF neural network. Finally, the obtained neural networks are used to identify a group of new defects, simulated by the FEM, but not belonging to the original dataset. Performance of the RBF network was also compared with the most commonly used multilayer perceptron (MLP) network model. The reached results demonstrate the efficiency of the proposed approach, and that RBF network performs better than MLP network model
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应用RBF神经网络和有限元分析解决缺陷识别反问题
本文提出了一种基于径向基函数(RBF)神经网络与有限元分析相结合的缺陷识别逆问题的求解方法。该方法用于识别金属壁的未知缺陷。本研究中使用的方法是利用有限元法(FEM)模拟金属壁上的大量缺陷。同时考虑了缺陷的宽度和高度的变化。然后将得到的结果用于生成一组用于RBF神经网络训练的向量。最后,利用得到的神经网络识别出一组新的缺陷,通过有限元模拟,但不属于原始数据集。将RBF网络的性能与最常用的多层感知器(MLP)网络模型进行了比较。实验结果证明了该方法的有效性,RBF网络的性能优于MLP网络模型
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