基于小波变换和神经网络的阀门健康监测

I. Tansel, J. Perotti, A. Yenilmez, P. Chen
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引用次数: 3

摘要

伺服阀是复杂的空间探索机械中最重要的部件之一。它们必须处于完美的状态,才能安全有效地操作非常有价值的复杂机器。本文提出了利用小波变换(WT)和自适应共振理论2 (ART2)型自学习神经网络(NN)相结合的方法对缺陷阀门进行检测。利用小波变换对阀门通电阶段的当前特征进行编码,ART2对小波变换的近似系数进行分类。WT- nn将所有正常阀门数据分类为单一类别,只要警惕性选择得当,对缺陷阀门数据进行新的分类。研究发现,如果操作条件发生巨大变化,WT-NN组合是定制诊断软件的有效替代方案
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Valve health monitoring with wavelet transformation and neural networks (WT-NN)
Servovalves are one of the most important components of the complex machinery of space exploration. They have to be at the perfect condition for safe and efficient operation of very valuable complex machines. In this paper, use of wavelet transformation (WT) and adaptive resonance theory 2 (ART2) type self learning neural network (NN) combination is proposed for detection of defective valves. The current signature of the energization stage of the valve was encoded by using the WT. ART2 classified the approximation coefficients of the WT. WT-NN classified all the normal valve data in single category and assigned new categories to the data of defective valves as long as the vigilance was selected properly. WT-NN combination was found an effective alternative to customized diagnostic software if the operating conditions change drastically
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