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首页> 外文期刊>Journal of King Saud University-Engineering Sciences >Robust fault detection for wind turbines using reference model-based approach
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Robust fault detection for wind turbines using reference model-based approach

机译:使用基于参考模型的方法对风机进行鲁棒故障检测

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This paper presents a reference model-based approach for detection of different faults in a wind turbine. Stochastic uncertainty has been considered in the model of wind turbine. The fault detection scheme is so designed that the generated residual is robust against the uncertainty. For residual evaluation purpose, generalized likelihood ratio (GLR) test has been performed. Threshold is computed using the table of chi-square distribution with one degree of freedom. Occurrence of a fault is concluded whenever evaluated residual crosses the threshold. Using this approach an actuator and a sensor fault in the pitch system and a sensor fault in the drive train system are successfully detected. Results are compared with Combined Observer and Kalman Filter (COK) approach (Chen et al. 2011) used for wind turbine fault detection with this approach requiring less detection time thus providing a more useful solution to the wind industry.
机译:本文提出了一种基于参考模型的方法来检测风力涡轮机中的不同故障。风力涡轮机模型中已经考虑了随机不确定性。设计故障检测方案,以使生成的残差对不确定性具有鲁棒性。为了进行残差评估,已进行了广义似然比(GLR)测试。使用具有一自由度的卡方分布表来计算阈值。只要评估的残差超过阈值,就可以确定故障的发生。使用这种方法,可以成功检测到变桨系统中的致动器和传感器故障以及传动系统中的传感器故障。将结果与用于风力发电机组故障检测的组合观测器和卡尔曼滤波(COK)方法(Chen等,2011)进行比较,这种方法所需的检测时间更少,从而为风电行业提供了更有用的解决方案。

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