Please use this identifier to cite or link to this item: http://dspace.unimap.edu.my:80/xmlui/handle/123456789/7230
Title: Artificial neural network for the classification of steel hollow pipe
Authors: Nur Farahiyah, Mohamad
Hafizawati, Zakaria
Rakhmad Arief, Siregar
Hariharan, M.
Fauziah, Mat
Keywords: Artificial intelligence
Neural networks (Computer science)
Pipe, Steel
Nondestructive testing
Pipelines
Crack detection
Tubes, Steel -- Cracking
Pipe, Steel -- Cracking
Issue Date: 11-Oct-2009
Publisher: Universiti Malaysia Perlis
Citation: p.9B 1 - 9B 4
Series/Report no.: Proceedings of International Conference on Applications and Design in Mechanical Engineering 2009 (iCADME 2009)
Abstract: Within industry, piping is a very important system that used to convey fluid (liquid and gases) from one location to another. Steel pipe is one of the commonly type of pipe that has been used since before. Crack on pipe is one of the things that always happen on pipe due to transfer fluid. Non-destructive (NDT) testing is responsible to detect the damage on pipe to avoid from bursting. From this, the paper presents a NDT method to detect damage in pipe by using Artificial Intelligence Neural Network (ANN) to compare Frequency Response Function (FRF) derived from impact testing on intact and damage pipe. Carbon Steel pipe with different hollow through the pipe in free-free condition is considered as a specimen. A simple feedforward with multilayer backpropagation neural network models is developed for the recognition of intact and damage steel pipe. FRF data presented on variation of amplitude load vs. frequency wave depends on disposition features can be very useful in crack detection in pipelines knowing the frequencies. This indicates that the representation of intact and damage pipe by the frequency using Artificial Neural Network (ANN) is reasonably accurate. Experimental results demonstrate that the recognition rate of the proposed neural network models is about 91.48%
Description: Organized by School of Mechatronic Engineering (UniMAP) & co-organized by The Institution of Engineering Malaysia (IEM), 11th - 13th October 2009 at Batu Feringhi, Penang, Malaysia.
URI: http://dspace.unimap.edu.my/123456789/7230
ISBN: 978-967-5415-07-4
Appears in Collections:Conference Papers
Hafizawati Zakaria
Hariharan Muthusamy, Dr.
Rakhmad Arief Siregar, Dr.

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