复合材料结构健康监测中制造不确定性的影响:一种信噪加权神经网络处理方法

H. Teimouri, A. Milani, R. Seethaler, A. Heidarzadeh
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引用次数: 12

摘要

本文研究了复合材料结构中制造不确定性对结构健康监测(SHM)中常用的人工神经网络(ANN)鲁棒性的潜在影响,即层压层厚度变化。也就是说,通过一个基于分层位置和尺寸预测敏感性的机翼型案例研究,当人工神经网络被施加到噪声输入时,评估了一个人工神经网络SHM系统的鲁棒性。鉴于观察到原始网络的性能较差,即使对其结构进行了精心优化,也有人提出通过一组信噪比对人工神经网络的输入层进行加权,然后对网络进行训练。后一种方法的损伤位置和尺寸预测均提高到90%以上。本文还讨论了所提出的稳健SN-ANN SHM的实际方面。
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On the Impact of Manufacturing Uncertainty in Structural Health Monitoring of Composite Structures: A Signal to Noise Weighted Neural Network Process
This article investigates the potential impact of manufacturing uncertainty in composite structures here in the form of thickness variation in laminate plies, on the robustness of commonly used Artificial Neural Networks (ANN) in Structural Health Monitoring (SHM). Namely, the robustness of an ANN SHM system is assessed through an airfoil case study based on the sensitivity of delamination location and size predictions, when the ANN is imposed to noisy input. In light of the observed poor performance of the original network, even when its architecture was carefully optimized, it had been proposed to weigh the input layer of the ANN by a set of signal-to-noise (SN) ratios and then trained the network. Both damage location and size predictions of the latter SHM approach were increased to above 90%. Practical aspects of the proposed robust SN-ANN SHM have also been discussed.
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来源期刊
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