Improving the neural network method for finite element model updating using homogenous distribution of design points |
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Authors: | M. H. Sadr S. Astaraki S. Salehi |
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Affiliation: | (1) Department of Aerospace Engineering, University of AmirKabir, Tehran, Iran;(2) Department of Biomedical Engineering, University of AmirKabir, Tehran, Iran |
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Abstract: | In developing a neural network technique for a finite element model updating, researchers have been shown that the number of training samples and their quality, significantly affect the accuracy of the NN predication. In this study, based on the genetic algorithm (GA) method, we reduce the number of analyses required to develop the training pairs and reduce the amount of time for training the NN. In the other words, a uniform distribution of design points inside the design space will be obtained by means of this approach. To validate the efficiency of GA sample selection, random generation (RG) method is used for comparison. Two comparisons are made based on a numerical and experimental example. One is updated from 10 degrees of freedom lumped parameters system and the other is updated from a free–free beam using test data. The results indicate that the GA sample selection can reduce the number of training samples without affecting the accuracy of the NN predication. In our present study, also, the advantages of using frequency response function (FRF) data as input to the NN are kept and the drawback of having too many frequency points is overcome by the application of principal component analyses (PCA). |
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Keywords: | Model updating Neural network Genetic algorithm Principle component analysis |
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