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Pipe crack identification based on the energy method and committee of neural networks
Authors:Jong-Won Lee  Sang-Ryul Kim  Young-Cheol Huh
Affiliation:1. Department of Architectural Engineering, Namseoul University, 91 Daehak-ro, Seonghwan-eup, Sebuk-gu, Cheonan-si, Chungnam, 331-707, Korea
2. Department of System Dynamics, Korea Institute of Machinery and Materials, 156 Gajeongbuk-Ro, Yuseong-Gu, Daejeon, 305-343, Korea
Abstract:A crack identification method using an equivalent bending stiffness for cracked beam and committee of neural networks is presented. The equivalent bending stiffness is constructed based on an energy method for a straight thin-walled pipe, which has a through-the-thickness crack, subjected to bending. Several numerical analysis for a steel cantilever pipe using the equivalent bending stiffness are carried out to extract the natural frequencies and mode shapes of the cracked beam. The extracted modal properties are used in constructing a training patterns of a neural network. The input to the neural network consists of the modal properties and the output is composed of the crack location and size. Multiple neural networks are constructed and each individual network is trained independently with the different initial synaptic weights. Then, the estimated crack locations and sizes from different neural networks are averaged. Crack detection is carried out for 16 damage cases using the proposed method, and the identified crack locations and sizes agree reasonably well with the exact values.
Keywords:
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