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Data-Driven Condition Monitoring Approaches to Improving Power Output of Wind Turbines

机译:提高风力涡轮机电力输出的数据驱动状态监测方法

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This paper presents data-driven approaches to improve the active power output of wind turbines based on estimating their health condition. The main procedure includes estimations of fault degree and health condition level, and optimal power dispatch control. The proposed method can adjust the active power output of individual turbines according to their health condition and can thus optimize the total energy output of a wind farm. In the paper, extreme learning machine algorithm and Bonferroni interval are applied to estimate fault degree, while an analytic hierarchy process is used to estimate the health condition level. A scheme for power dispatch control is formulated based on the estimated health condition. Models have been identified from supervisory control and data acquisition data acquired from an operational wind farm, which contains temperature data of gearbox bearing and generator winding. The results show that the proposed method can maximize the operation efficiency of the wind farm while significantly reducing the fatigue loading on the faulty wind turbines.
机译:本文提出了基于估计其健康状况来提高风力涡轮机有源功率输出的数据驱动方法。主要过程包括故障程度和健康状况水平的估计,以及最佳的功率调度控制。该方法可以根据其健康状况调节各个涡轮机的有功功率输出,因此可以优化风电场的总能量输出。在本文中,应用极限学习机算法和Bonferroni间隔来估计故障程度,而分析层次处理用于估计健康状况水平。基于估计的健康状况配制电力调度控制方案。已经从运营风电场获取的监督控制和数据采集数据中识别模型,其中包含齿轮箱轴承的温度数据和发电机绕组。结果表明,该方法可以最大化风电场的运行效率,同时显着降低了故障风力涡轮机的疲劳负载。

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