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Development of a Fault Monitoring Technique for Wind Turbines Using a Hidden Markov Model

机译:基于隐马尔可夫模型的风力发电机组故障监测技术的发展

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摘要

Regular inspection for the maintenance of the wind turbines is difficult because of their remote locations. For this reason, condition monitoring systems (CMSs) are typically installed to monitor their health condition. The purpose of this study is to propose a fault detection algorithm for the mechanical parts of the wind turbine. To this end, long-term vibration data were collected over two years by a CMS installed on a 3 MW wind turbine. The vibration distribution at a specific rotating speed of main shaft is approximated by the Weibull distribution and its cumulative distribution function is utilized for determining the threshold levels that indicate impending failure of mechanical parts. A Hidden Markov model (HMM) is employed to propose the statistical fault detection algorithm in the time domain and the method whereby the input sequence for HMM is extracted is also introduced by considering the threshold levels and the correlation between the signals. Finally, it was demonstrated that the proposed HMM algorithm achieved a greater than 95% detection success rate by using the long-term signals.
机译:由于风力涡轮机位置偏僻,因此很难进行定期维护保养检查。因此,通常会安装状况监视系统(CMS)来监视其健康状况。这项研究的目的是为风力涡轮机的机械零件提出一种故障检测算法。为此,安装在3兆瓦风力涡轮机上的CMS在两年内收集了长期振动数据。主轴在特定转速下的振动分布通过威布尔分布进行近似,其累积分布函数用于确定指示机械零件即将发生故障的阈值水平。采用隐马尔可夫模型(HMM)提出了时域统计故障检测算法,并考虑了阈值水平和信号之间的相关性,引入了提取HMM输入序列的方法。最后,证明了所提出的HMM算法通过使用长期信号实现了大于95%的检测成功率。

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