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Neural network prediction of aluminum-lithium weld strengths from acoustic emission amplitude dataAE flaw growth activity was monitored in aluminum-lithium weld specimens from the onset of tensile loading to failure. Data on actual ultimate strengths together with AE data from the beginning of loading up to 25 percent of the expected ultimate strength were used to train a backpropagation neural network to predict ultimate strengths. Architecturally, the fully interconnected network consisted of an input layer for the AE amplitude data, a hidden layer to accommodate failure mechanism mapping, and an output layer for ultimate strength prediction. The trained network was then applied to the prediction of ultimate strengths in the remaining six specimens. The worst case prediction error was found to be +2.6 percent.
Document ID
19940035595
Acquisition Source
Legacy CDMS
Document Type
Reprint (Version printed in journal)
Authors
Hill, Eric V. K.
(Embry-Riddle Aeronautical Univ. Daytona Beach, FL, United States)
Israel, Peggy L.
(Lamar Univ. Beaumont, TX, United States)
Knotts, Gregory L.
(Acoustic Emission Consultants Madison, AL, United States)
Date Acquired
August 16, 2013
Publication Date
September 1, 1993
Publication Information
Publication: Materials Evaluation
Volume: 51
Issue: 9
ISSN: 0025-5327
Subject Category
Quality Assurance And Reliability
Accession Number
94A12250
Distribution Limits
Public
Copyright
Other

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