Neural-Fuzzy model Based Steel Pipeline Multiple Cracks Classification

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Abstract

While pipes are cheaper than other means of transportation, this cost saving comes with a major price: pipes are subject to cracks, corrosion etc., which in turn can cause leakage and environmental damage. In this paper, Neural-Fuzzy model for multiple cracks classification based on Lamb Guide Wave. Simulation results for 42 sample were collected using ANSYS software. The current research object to carry on the numerical simulation and experimental study, aiming at finding an effective way to detection and the localization of cracks and holes defects in the main body of pipeline. Considering the damage form of multiple cracks and holes which may exist in pipeline, to determine the respective position in the steel pipe. In addition, the technique used in this research a guided lamb wave based structural health monitoring method whereas piezoelectric transducers will use as exciting and receiving sensors by Pitch-Catch method. Implementation of simple learning mechanism has been developed specially for the ANN for fuzzy the system represented.

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APA

Elwalwal, H. M., Mahzan, S. B. H., & Abdalla, A. N. (2017). Neural-Fuzzy model Based Steel Pipeline Multiple Cracks Classification. In Journal of Physics: Conference Series (Vol. 914). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/914/1/012018

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