Aircraft wing structural damage localization research based on RBF neural network

Cybernetics and Intelligent Systems(2011)

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摘要
In this article, the wing structural damage is identified and located by using modal analysis and Radial Basis Function (RBF) neural network. The finite element model of an aircraft wing is set up which is used for model analysis. The number of network centers is increased gradually which can ensure that the network has a simplest structure; RBF center is determined by K-means clustering algorithm which can improve the representative of each center and improve the training accuracy; the network weights is determined using the concept of pseudo inverse matrix and inverse matrix, which can shorten the training period and improve training efficiency. The computer simulation result shows that this damage identification method has high identification accuracy. The relative error is 1.422%, and the absolute error is 31.28mm. Comparing with the analyzing spar and skin individually, this method has a more spreading value.
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关键词
damage identification method,radial basis function networks,pattern clustering,aircraft wings,rbf neural networks,k-means clustering algorithm,structural damage localization,aerospace components,matrix algebra,pseudo inverse matrix,modal analysis,finite element model,structural engineering computing,inverse problems,aircraft,radial basis function neural network,finite element analysis,condition monitoring
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