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Comparative analysis of binning and support vector regression for wind turbine rotor speed based power curve use in condition monitoring

机译:基于功率曲线的风力涡轮机转子速度的分级和支持向量回归在状态监测中的比较分析

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Unscheduled maintenance consumes a lot of time and effort and hence reduces the overall cost-effectiveness of wind turbines. Supervisory control and data acquisition (SCADA) based condition monitoring is a cost-effective approach to carry out diagnosis and prognosis of faults and to provide performance assessment of a wind turbine. The rotor speed based power curve, which describes the nonlinear relationship between wind turbine rotor speed and power output, is useful for performance appraisal of a wind turbine though limited work on this area has been undertaken to date. Support Vector Machine (SVM) is a data-driven, nonparametric approach used for both classification and regression problems developed initially from statistical learning theory (SLT) by Vapnik. SVM is useful in forecasting and prediction applications. This paper deals with the application of support vector regression to estimate the rotor speed based power curve of a wind turbine and its usefulness in identifying potential faults. It is compared with a conventional approach based on a binned rotor speed power curve to identify operational anomalies. The comparative studies summarise the advantages and disadvantages of these techniques. SCADA data obtained from a healthy operational wind turbine is used to train and validate these methods.
机译:计划外的维护会耗费大量时间和精力,因此会降低风力涡轮机的总体成本效益。基于监控和​​数据采集(SCADA)的状态监视是一种经济高效的方法,可以进行故障的诊断和预后并提供风力涡轮机的性能评估。基于转子速度的功率曲线描述了风力涡轮机转子速度和功率输出之间的非线性关系,尽管迄今为止在该领域的工作量有限,但它对于评估风力涡轮机的性能非常有用。支持向量机(SVM)是一种数据驱动的非参数方法,用于分类和回归问题,最初是由Vapnik从统计学习理论(SLT)开发而来的。 SVM在预测和预测应用程序中很有用。本文研究了基于支持向量回归的风力涡轮机功率曲线估计及其在识别潜在故障中的实用性。将其与基于装仓的转子速度功率曲线的常规方法进行比较,以识别运行异常。比较研究总结了这些技术的优缺点。从运行良好的风力涡轮机获得的SCADA数据用于训练和验证这些方法。

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