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Gaussian process models for mitigation of operational variability in the structural health monitoring of wind turbines

机译:高斯工艺模型,用于减轻风力涡轮机结构健康监测的操作变量

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摘要

The analysis presented in this work relates to the quantification of the effect of a selected set of measured Environmental and Operational Parameters (EOPs) on the dynamic properties of low and high frequency vibration, in the context of a vibration monitoring campaign implemented on the blade of an operating wind turbine. To this end, a Gaussian Process (GP) time-series modelling approach is adopted, in which the coefficients of a time-series model are driven by a Gaussian Process Regression on the selected EOPs. The properties of the data acquisition system allow to evaluate low and high frequency dynamics, the former associated with the structural dynamics of the blade, and the latter with the wave transmission properties of the material, assessed with the help of an electromechanical actuator installed on the blade. In this form, a multi-temporal-scale approach is adopted here, where a GP Linear Parameter Varying Auto-Regressive model is selected to represent low frequency (structural) dynamics, while in parallel a GP Continuous Wavelet Transform model is used to represent high frequency dynamics (associated with wave transmission properties in the material). In both cases the blade is considered in its healthy state as well as in various operational regimes, including idle, and rotating at two different set points. As a result, it is demonstrated that GP time-series modelling succeeds in evaluating and isolating the influence of different EOPs in the features of the vibration response of the wind turbine blade, and at the same time, normalize their effects to enhance the detectability of damage.
机译:本文提出的分析涉及在叶片上实施的振动监测活动的背景下的所选测量的环境和操作参数(EOPS)对低频和高频振动的动态特性的影响。一台运行的风力涡轮机。为此,采用高斯过程(GP)时间序列建模方法,其中时间序列模型的系数由所选择的EOPS上的高斯过程回归驱动。数据采集​​系统的特性允许评估低频和高频动力学,前者与刀片的结构动态相关联,并且后者具有材料的波动性能,借助于安装在机电执行器的帮助下评估刀。在这种形式中,这里采用多时间级方法,其中选择GP线性参数变化自回归模型以表示低频(结构)动态,而在并行中,GP连续小波变换模型用于表示高频率动态(与材料中的波传输属性相关联)。在这两种情况下,刀片在其健康状态下被认为是在各种操作方案中,包括怠速,并在两个不同的设定点处旋转。结果表明,GP时间序列建模成功地评估和隔离不同EOPS在风力涡轮机叶片的振动响应特征中的影响,同时正常化它们的效果,以提高可检测性损害。

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