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Optimization of Neural Network Pattern Recognition Systems for Guided Waves Damage Identification in Beams

机译:用于光束导波损伤识别神经网络模式识别系统的优化

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Neural network pattern recognition is an advanced regression technique that can be applied to identify guided wave response signals for quantifying damages in structures. This paper describes a procedure to optimize the design of a multi-layer perceptron backpropagation neural network with signals preprocessed by the wavelet transform. The performance can be further improved using a weight-range selection technique in a series network since there is increased sensitivity of the neural network to experimental damage patterns if the training range is reduced. Damage identification in beams with longitudinal guided waves is used in this study.
机译:神经网络模式识别是一种高级回归技术,可以应用于识别用于量化结构中损坏的引导波响应信号。本文介绍了一种用小波变换预处理的信号优化多层Perceptron反向化神经网络的过程。如果训练范围降低,则使用系列网络中的重量范围选择技术可以进一步改善性能,因为如果训练范围减少,则神经网络对实验损坏模式的灵敏度。本研究使用了纵向引导波的光束中的损坏识别。

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