基于SCADA数据和机器学习的风电齿轮箱故障预测

H. Rashid, E. Khalaji, Jawad Rasheed, C. Batunlu
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引用次数: 9

摘要

随着风电需求持续以指数速度增长,降低运行维护费用和提高可靠性已成为风电机组维护策略的重中之重。在风力发电机组达到灾难性程度之前对其进行故障预测,对于降低因不必要的定期维护而造成的运行和维护成本至关重要。本研究利用机器学习技术,提出了一种基于scada数据的状态监测系统。我们使用我们的数据集训练了各种机器学习模型,然后从中选择最好的模型来预测变速箱温度。套袋回归方法的R2评分为99.7%,均方误差为0.35,准确度最高。实验结果表明,该方法可提前68天预测汽轮机齿轮箱故障,并在故障加剧时再次报警。警报和实际故障之间的时间足以让操作员在变速箱变成灾难性事件之前修复它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Prediction of Wind Turbine Gearbox Based on SCADA Data and Machine Learning
As the demand for wind power continues to grow at an exponential rate, reducing operation and maintenance expenses and improving reliability has become pinnacle priorities in wind turbine maintenance strategies. Prediction of wind turbine failure earlier than they reach a catastrophic degree is essential to reduce the operation and maintenance cost because of unnecessary scheduled maintenance. In this study, a SCADA-data based condition monitoring system is proposed using machine learning techniques. We trained various machine learning models using our dataset, and then selected the best among those to predict the gearbox temperature. The bagging regression method accomplished the best accuracy with 99.7% R2 score, while restraining the mean square error to 0.35. The experimental results showed that our method anticipated 68 days ahead of turbine gearbox failure, and generated another alarm when fault turned intense. The time between alarms and actual failure is enough for the operator to fix the gearbox before it turns to a catastrophic event.
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