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Optimal sensor selection for wind turbine condition monitoring using multivariate Principal Component Analysis approach

机译:多元主成分分析方法在风机状态监测中的最优传感器选择

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With the fast growth in wind energy technologies, research into the condition monitoring system for wind turbines has drawn more attentions. Despite the advantages from the condition monitoring systems, there are also several challenges for the application of condition monitoring system for wind turbines. Accurate and adequate information of the wind turbine is needed for the condition monitoring system to carry out analysis, particularly with the growing size of wind farms. Another challenge is the huge amount of data needing to be collected, handled and processed. Minimising the number of sensors whilst still maintaining a sufficient number to assess the system's conditions is a critical concern for condition monitoring. This paper focuses on the application of Principal Component Analysis (PCA) to the optimization of sensor selection for wind turbine condition monitoring. The principle behind the proposed methodology is presented and the method is also validated using simulation data obtained from wind power generation model in PSCAD/EMTDC.
机译:随着风能技术的飞速发展,对风机状态监测系统的研究引起了越来越多的关注。尽管状态监测系统具有优势,但是在风力涡轮机中使用状态监测系统也存在一些挑战。状态监测系统进行分析需要风力涡轮机的准确和足够的信息,尤其是随着风电场规模的扩大。另一个挑战是需要收集,处理和处理大量数据。最小化传感器的数量,同时仍保持足够的数量来评估系统的状况是状况监控的关键问题。本文将重点放在主成分分析(PCA)在优化风机状态监测传感器选择中的应用。提出了所提出方法的原理,并使用从PSCAD / EMTDC中的风力发电模型获得的仿真数据验证了该方法。

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