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Fault Monitoring of Wind Turbine Generator Brushes: A Data-Mining Approach

机译:风力发电机电刷故障监测:数据挖掘方法

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摘要

Components of wind turbines are subjected to asymmetric loads caused by variable wind conditions. Carbon brushes are critical components of the wind turbine generator. Adequately maintaining and detecting abnormalities in the carbon brushes early is essential for proper turbine performance. In this paper, data-mining algorithms are applied for early prediction of carbon brush faults. Predicting generator brush faults early enables timely maintenance or replacement of brushes. The results discussed in this paper are based on analyzing generator brush faults that occurred on 27 wind turbines. The datasets used to analyze faults were collected from the supervisory control and data acquisition (SCADA) systems installed at the wind turbines. Twenty-four data-mining models are constructed to predict faults up to 12 h before the actual fault occurs. To increase the prediction accuracy of the models discussed, a data balancing approach is used. Four data-mining algorithms were studied to evaluate the quality of the models for predicting generator brush faults. Among the selected data-mining algorithms, the boosting tree algorithm provided the best prediction results. Research limitations attributed to the available datasets are discussed.
机译:风力涡轮机的组件承受着因风况变化而引起的不对称载荷。碳刷是风力发电机的关键部件。尽早适当地维护和检测碳刷中的异常对于适当的涡轮性能至关重要。本文将数据挖掘算法用于碳刷故障的早期预测。尽早预测发电机电刷故障可以及时维护或更换电刷。本文讨论的结果基于对27台风力发电机上发生的发电机电刷故障的分析。用于分析故障的数据集是从安装在风力涡轮机上的监督控制和数据采集(SCADA)系统收集的。构建了二十四个数据挖掘模型来预测实际故障发生之前的12小时内的故障。为了提高所讨论模型的预测准确性,使用了一种数据平衡方法。研究了四种数据挖掘算法,以评估用于预测发电机电刷故障的模型的质量。在所选的数据挖掘算法中,增强树算法提供了最佳的预测结果。讨论了归因于可用数据集的研究局限性。

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