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Performance of neural networks for simulation and prediction of temperature-induced modal variability

机译:神经网络对温度引起的模态变异性进行仿真和预测的性能

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Vibration-based damage detection methods use changes in modal parameters to diagnose structural degradation or damage. Structures in reality are subject to varying environmental effects which also cause changes in modal parameters. The well-defined nature of the environmental effects on modal properties is essential for reliable damage diagnosis based on vibration measurement. In this paper, the performance of artificial neural networks (ANNs) for simulation and prediction of temperature-caused variability of modal frequencies is investigated. Making use of one-year measurement data of modal frequencies and temperatures from an instrumented cable-stayed bridge, three- layer back-propagation (BP) neural networks are configured to model the correlation between the temperatures and frequencies. Two approaches are adopted in defining the training samples to train the neural networks and the testing samples to verify the prediction capability of the neural networks. It is shown that when using appropriate training data covering a wide range of temperature variations, the trained neural networks exhibit satisfactory performance in both reproduction (simulation) and prediction (generalization). A good mapping between the temperatures and frequencies is obtained by the neural network models for all measured modes.
机译:基于振动的损坏检测方法使用模态参数的变化来诊断结构退化或损坏。现实中的结构会受到变化的环境影响,这也会引起模态参数的变化。环境对模态特性的明确影响,对于基于振动测量的可靠损伤诊断至关重要。本文研究了人工神经网络(ANN)在模拟和预测温度引起的模态频率可变性方面的性能。利用来自斜拉桥的模态频率和温度的一年测量数据,配置了三层反向传播(BP)神经网络以对温度和频率之间的相关性进行建模。定义训练样本以训练神经网络和测试样本采用两种方法来验证神经网络的预测能力。结果表明,当使用涵盖广泛温度变化范围的适当训练数据时,训练后的神经网络在复制(模拟)和预测(泛化)方面均表现出令人满意的性能。通过神经网络模型对所有测得的模式都可以在温度和频率之间获得良好的映射。

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