Guided waves damage identification in beams with test pattern dependent series neural network systems

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作者
Division of Mechanical Engineering, University of Queensland, Brisbane, QLD 4072, Australia [1 ]
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来源
WSEAS Trans. Comput. Res. | 2008年 / 2卷 / 81-90期
关键词
Neural networks - Nondestructive examination - Pattern recognition - Ultrasonic testing - Damage detection - Guided electromagnetic wave propagation;
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摘要
In regression neural networks for pattern recognition of preprocessed guided waves signals in beams, a trained network produced large errors when identifying a test pattern not found in the training set. To improve the accuracy of results, a new neural network procedure was introduced where progressive training was performed in a series combined network with the integration of a weight-range selection (WRS) technique that was dependent on the test pattern. The WRS method was applied for a supervised multi-layer perceptron operating with one hidden layer of neurons and trained using a backpropagation algorithm. The system was able to achieve average predictions accurate to 2.5% and 7.8% of the original training range sizes for the damage location and depth respectively while the WRS provided up to 13.9% improvement compared to equivalent conventional neural networks.
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