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Condition monitoring of wind turbine bearings progressive degradation using principal component analysis

机译:基于主成分分析的风机轴承渐进退化状态监测

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Troubles are very uncertain when a vital component of a machine breaks down. Failures of high-speed shaft bearing (HSSB) in a wind turbine are very expensive since it induces the unplanned shutdown of the electrical energy production. In this sense, a vibration-based diagnosis methodology for wind turbine high-speed bearing is proposed using principal component analysis (PCA), applied to extracted features from the vibration signals. Three domains have been investigated in order to extract the features: time domain, frequency domain, and the time-frequency domain. The effectiveness of these features is quantified by two measures, i.e., monotonicity and trendability. The principal component analysis is used to build a health indicator (HI) to describe the health state of the monitored bearing. The potential of this strategy was confirmed utilizing a real run-to-failure vibration history of an HSSB. The exploratory comes about to appear that the proposed approach can effectively identify an early failure.
机译:当机器的重要组件发生故障时,问题非常不确定。风力涡轮机中的高速轴轴承(HSSB)的故障非常昂贵,因为它会导致电能生产的计划外停机。从这个意义上讲,提出了一种使用主成分分析(PCA)的基于风力机的风力涡轮机高速轴承诊断方法,并将其应用于从振动信号中提取的特征。为了提取特征,已经研究了三个域:时域,频域和时频域。这些特征的有效性通过两种方法量化,即单调性和趋势性。主成分分析用于建立健康指标(HI),以描述受监视轴承的健康状态。利用HSSB的从运行到失败的真实振动历史,证实了该策略的潜力。探索开始出现,提出的方法可以有效地识别早期故障。

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