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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Blade damage prognosis based on kernel principal component analysis and grey model using subsampled tip-timing signals
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Blade damage prognosis based on kernel principal component analysis and grey model using subsampled tip-timing signals

机译:基于核主成分分析和使用二次采样叶尖定时信号的灰色模型的叶片损伤预测

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摘要

Damage prognosis of high-speed blades is very important for industrial turbomachinery. Nowadays, vibration monitoring using blade tip-timing methods is becoming promising. However, its main drawback is blade tip-timing signals are subsampled. Very few works have been done on damage prognosis using subsampled blade tip-timing signals. This paper investigates a novel method of blade damage prognosis based on kernel principal component analysis and grey model. Firstly, a nonaliasing reconstruction algorithm of subsampled blade tip-timing signals is proposed based on the Shannon theorem and wavelet packet transform. Secondly, kernel principal component analysis is done on the damage feature space and a damage index is defined by Mahalanobis distance. Then a grey model (1) model is proposed for damage prognosis. In the end, an experimental setup is built and a long time testing is done for collecting samples. The experimental results validate the superiority of the proposed method.
机译:高速叶片的损伤预后对工业涡轮机械非常重要。如今,使用叶片尖端定时方法进行振动监测变得有希望。然而,它的主要缺点是叶片尖端定时信号被二次采样。使用欠采样的叶片尖端定时信号对损伤预后所做的工作很少。本文研究了一种基于核主成分分析和灰色模型的叶片损伤预测的新方法。首先,基于香农定理和小波包变换,提出了一种对采样叶尖定时信号的非混叠重建算法。其次,对损伤特征空间进行核主成分分析,并由马氏距离定义损伤指数。然后提出了灰色模型(1),用于损伤的预测。最后,建立了一个实验装置,并进行了长时间的测试以收集样品。实验结果验证了该方法的优越性。

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