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Applying design knowledge and machine learning to scada data for classification of wind turbine operating regimes

机译:将设计知识和机器学习应用于scada数据以对风力涡轮机运行状况进行分类

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Wind turbines operate under non-stationary dynamic loads to which they constantly adapt by regulating the orientation of the blades and the rotor, as well as the generator torque resulting in characteristic responses (i.e. operating regimes) over a range of operating conditions. We propose a method to classify the operating regimes from coarse resolution data recorded by the turbine supervisory controller (i.e. data from the SCADA system). It relies on design knowledge, and algorithms for dimensionality reduction and classification. High resolution acceleration measurements from a custom structural state monitoring system and a data set of several channels from the SCADA system are used for validation. Estimation of the level of damage accumulated on structural components based on the classification of operating regimes is shown as an application.
机译:风力涡轮机在非平稳动态负载下运行,通过调节叶片和转子的方向以及发电机转矩,风力涡轮机不断适应这些动态负载,从而在一系列运行条件下产生特征响应(即运行状态)。我们提出了一种根据涡轮监控器记录的粗分辨率数据(即来自SCADA系统的数据)对运行状态进行分类的方法。它依赖于设计知识以及降维和分类的算法。来自自定义结构状态监视系统的高分辨率加速度测量结果以及来自SCADA系统的多个通道的数据集用于验证。示出了基于运行状况的分类来估计累积在结构部件上的损坏程度的应用。

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