Comparison of radial basis function and back-error propagation neural networks for crack detection in variable cross-section beams
Date
2012-02-27Author
Neda Nasiri
Shahab Ilbeigi
Foad Nazari
Behzad Asmar
Mahdi Karimi
Sara Baghalian
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Show full item recordAbstract
In this study a method for identification of crack in
variable cross-section beam is presented. The process of crack
identification is consists of three steps. In first step, three natural
frequencies of a variable cross-section beam for different
locations and depths of cracks are obtained using Finite Element
Method (FEM). In second step, two Back-Error Propagation
neural networks (BEP) and two Radial Basis Function neural
networks (RBF) are created and trained. The inputs of neural
networks are first three natural frequencies and the outputs of
first and second BEP and also RBF are corresponding locations
and depth of cracks, respectively. In third step, some of natural
frequencies of variable cross-section beam with distinct crack
conditions are applied as inputs to trained neural networks.
Finally obtained results of two types of neural networks are
compared with each other. Computed results illustrate that
computed cracks characteristics are in good agreements with
actual data.
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