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Imputation of Missing Data for Diagnosing Sensor Faults in a Wind Turbine

机译:缺失数据的插入以诊断风力涡轮机中的传感器故障

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One of the crucial requirements for the practical implementation of empirical diagnostic systems is the capability of handling missing data. This is done by resorting to missing data imputation techniques in a pre-processing module. The pre-processing module is a part of a previously developed diagnostic system which receives batches of residuals generated by a combined set of observers and progressively feeds the processed residuals to a fault classification module that incrementally learns the residuals-faults relations and dynamically classifies the faults including multiple new classes. The proposed method is tested with respect to sensor fault diagnosis of the incomplete scenarios in a doubly fed induction generator (DFIG) of a wind turbine.
机译:对经验诊断系统的实际实施的关键要求之一是处理丢失数据的能力。这是通过在预处理模块中使用丢失的数据插补技术来完成的。预处理模块是先前开发的诊断系统的一部分,该诊断系统接收由一组观察者组合生成的成批残差,并将处理后的残差逐步馈送到故障分类模块,该模块将逐步学习残差与故障的关系并动态分类故障包括多个新类。针对风力涡轮机的双馈感应发电机(DFIG)中不完整情况的传感器故障诊断,测试了所提出的方法。

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