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ANN-Based Structural Damage Diagnosis Using Measured Vibration Data

机译:基于实测振动数据的基于神经网络的结构损伤诊断

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摘要

This paper presents the application of a novel Artificial Neural Network (ANN) model for the diagnosis of structural damage. The ANN model, denoted as the GRNNFA, is a hybrid model combining the General Regression Neural Network Model (GRNN) and the Fuzzy ART (FA) model. It not only retains the important features of the GRNN and FA models (i.e. fast and stable network training and incremental growth of network structure) but also facilitates the removal of the noise embedded in the training samples. Structural damage alters the stiffness distribution of the structure and so as to change the natural frequencies and mode shapes of the system. The measured modal parameter changes due to a particular damage are treated as patterns for that damage. The proposed GRNNFA model was trained to learn those patterns in order to detect the possible damage location of the structure. Simulated data is employed to verify and illustrate the procedures of the proposed ANN-based damage diagnosis methodology. The results of this study have demonstrated the feasibility of applying the GRNNFA model to structural damage diagnosis even when the training samples were noise contaminated.
机译:本文介绍了一种新型的人工神经网络(ANN)模型在结构损伤诊断中的应用。称为GRNNFA的ANN模型是一种混合模型,结合了通用回归神经网络模型(GRNN)和模糊ART(FA)模型。它不仅保留了GRNN和FA模型的重要特征(即快速稳定的网络训练和网络结构的增量增长),而且还有助于消除嵌入在训练样本中的噪声。结构损伤会改变结构的刚度分布,从而改变系统的固有频率和振型。由于特定损伤而测得的模态参数变化被视为该损伤的模式。提出的GRNNFA模型经过训练以学习这些模式,以便检测结构的可能损坏位置。仿真数据用于验证和说明所提出的基于ANN的损伤诊断方法的过程。这项研究的结果表明,即使训练样本受到噪声污染,也可以将GRNNFA模型应用于结构损伤诊断。

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