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Gaussian Processes for Structural Health Monitoring of Wind Turbine Blades

机译:高斯过程的风力发电机叶片结构健康监测

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Nonstationary environmental and operational variables (EOVs) acting on wind turbines present challenges for the successful application of structural health monitoring systems. A contributing factor to these challenges is the fact that EOVs are often not monitored sufficiently, leading to uncertainties being introduced into monitored components. The method proposed in this paper takes advantage of the fact that all blades on a wind turbine possess nominally identical properties and encounter the same EOVs. Gaussian processes (GPs) are used to learn the relationships in the properties between pairs of blades when they are in a healthy state. The GPs then predict the properties of one blade, given that of another, and deviations between the actual and predicted properties (i.e. the residual errors) are used to indicate the occurrence of damage. To validate this method, it is applied to data from a real wind turbine, where some form of blade damage has been known to have taken place. X-bar control chart analysis shows that this method identifies damage as early as six months before the damage led to problems.
机译:作用在风力涡轮机上的非平稳环境和运行变量(EOV)为成功应用结构健康监测系统提出了挑战。这些挑战的一个促成因素是,通常没有对EOV进行足够的监控,导致不确定性被引入到被监控的组件中。本文提出的方法利用了以下事实:风力涡轮机上的所有叶片都具有名义上相同的特性,并且遇到相同的EOV。高斯过程(GPs)用于了解成对的刀片在健康状态下的属性之间的关系。然后,GP会预测一个叶片的性能(假设另一个叶片的性能),并且实际和预测性能之间的偏差(即残留误差)将用于指示损坏的发生。为了验证该方法,将其应用于来自真实风力涡轮机的数据,已知该风力涡轮机中已发生某种形式的叶片损坏。 X-bar控制图分析表明,这种方法可以在损坏导致问题发生的六个月之前发现损坏。

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