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Pseudo-Label Generation Method Based on Wind Turbine SCADA Data

机译:基于风力涡轮机SCADA数据的伪标签生成方法

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During the daily operation of the wind turbine, the SCADA system continuously records the various operating parameters of the wind turbine, and has stored a large amount of data for many years. The amount of these data is huge, but most of them are unlabeled data. If you want to use deep learning to study the state of the wind turbine, these data cannot be directly used for analysis. In response to the above problems, this paper proposes a method of pseudo-label generation based on deep neural networks. This method first builds a deep neural network model, secondly uses part of the labeled data to train the built deep neural network model, and finally uses the trained deep neural network model to pseudo-label the unlabeled data, so as to obtain a large number of labeled data, label data set.
机译:在风力涡轮机的日常运行期间,SCADA系统连续记录风力涡轮机的各种操作参数,并且多年来储存了大量数据。 这些数据的数量很大,但大多数是未标记的数据。 如果您想使用深度学习来研究风力涡轮机的状态,这些数据不能直接用于分析。 响应于上述问题,本文提出了一种基于深神经网络的伪标签生成方法。 该方法首先构建了一个深度神经网络模型,其次使用部分标记的数据来训练内置的深神经网络模型,最后使用训练的深神经网络模型来伪标签未标记的数据,从而获得大量 标记数据,标签数据集。

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