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Acoustic Emission Detection and Prediction of Fatigue Crack Propagation in Composite Patch Repairs using Neural Networks
Review of Progress in Quantitative Nondestructive Evaluation
  • Navdeep Singh
  • Navrag Singh
  • Anthony Chukwujekwu Okafor, Missouri University of Science and Technology
Abstract

An aircraft is subjected to severe structural and aerodynamic loads during its service life. These loads can cause damage or weakening of the structure especially for aging military and civilian aircraft, thereby affecting its load carrying capabilities. Hence composite patch repairs are increasingly used to repair damaged aircraft metallic structures to restore its structural efficiency. This paper presents the results of Acoustic Emission (AE) monitoring of crack propagation in 2024-T3 Clad aluminum panels repaired with adhesively bonded octagonal, single sided boron/epoxy composite patch under tension-tension fatigue loading. Crack propagation gages were used to monitor crack initiation. The identified AE sensor features were used to train neural networks for predicting crack length. The results show that AE events are correlated with crack propagation. AE system was able to detect crack propagation even at high noise condition of 10 Hz loading; that crack propagation signals can be differentiated from matrix cracking signals that take place due to fiber breakage in the composite patch. Three back-propagation cascade feed forward networks were trained to predict crack length based on the number of fatigue cycles, AE event number, and both the Fatigue Cycles and AE events, as inputs respectively. Network using both fatigue cycles and AE event number as inputs to predict crack length gave the best results, followed by Network with fatigue cycles as input, while network with just AE events as input had a greater error.

Department(s)
Mechanical and Aerospace Engineering
Keywords and Phrases
  • crack detection,
  • fatigue cracks,
  • maintenance Engineering,
  • neural nets,
  • Acoustic emission testing,
  • Composite materials,
  • Polymers
Document Type
Article - Conference proceedings
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2007 American Institute of Physics (AIP), All rights reserved.
Publication Date
1-1-2007
Publication Date
01 Jan 2007
Citation Information
Navdeep Singh, Navrag Singh and Anthony Chukwujekwu Okafor. "Acoustic Emission Detection and Prediction of Fatigue Crack Propagation in Composite Patch Repairs using Neural Networks" Review of Progress in Quantitative Nondestructive Evaluation (2007)
Available at: http://works.bepress.com/anthony-okafor/3/