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首页> 外文期刊>Meccanica: Journal of the Italian Association of Theoretical and Applied Mechanics >Rotor crack identification based on neural networks and modal data
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Rotor crack identification based on neural networks and modal data

机译:基于神经网络和模态数据的转子裂纹识别

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摘要

Amodel-based procedure for rotor crack localization and assessment is presented in this paper. The procedure is applied to a small-size test rig provided with a notch. Both the position and depth of the notch are estimated through a neural network on the basis of the first four natural frequencies of the rotor. A 3-D finite element model is used to generate the data for training the net. One of the contributions of this paper consists of a meshing procedure that reduces the systematic errors of the model, which have a significant influence in identification accuracy. A sensitivity analysis has been carried out for any size and position of the notch, which constitutes another original contribution in this field. In the studied case, the proposed procedure is able to predict both the position and depth of the notch when the notch depth is greater than 20 % of the rotor diameter. The sensitivity analysis reveals that there are blind spots in the rotor as regards notch identification.
机译:本文提出了一种基于模型的转子裂纹定位与评估程序。该程序应用于带有缺口的小型试验台。根据转子的前四个固有频率,通过神经网络估算缺口的位置和深度。 3-D有限元模型用于生成训练网络的数据。本文的贡献之一是减少网格的过程,该过程减少了模型的系统误差,这对识别精度有重要影响。已经对缺口的任何大小和位置进行了灵敏度分析,这构成了该领域的另一项原创性贡献。在所研究的情况下,当切口深度大于转子直径的20%时,所提出的程序能够预测切口的位置和深度。灵敏度分析显示,在转子上存在缺口识别方面的盲点。

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