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FAULT WARNING METHOD OF WIND TURBINE BASED ON MULTIVARIATE DATA ANOMALY DETECTION

机译:基于多元数据异常检测的风力涡轮机故障警告方法

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摘要

Due to the complexity of operating condition and coupling of component, the timeliness and accuracy of fault warning for wind turbine is difficult to guarantee, causing lots of mistakes and delays of fault warning. The paper proposes a novel method based on multivariate data anomaly detection. The paper firstly carries out the fault feature extraction methods of multivariate data. Secondly, the paper utilizes the MLR (Multiple Linear Regression) method to establish the accuracy fault warning model of wind turbine. Finally based on MOD (Multivariate outlier detection) method, the paper realizes the efficient and accuracy fault warning of wind turbine. Cases verify the validity of the method in this paper.
机译:由于部件的运行状况和耦合的复杂性,风力涡轮机故障警告的时间性和准确性难以保证,造成大量错误和故障警告的延误。本文提出了一种基于多元数据异常检测的新方法。本文首先执行多元数据的故障特征提取方法。其次,本文利用了MLR(多元线性回归)方法来建立风力涡轮机的精度故障警告模型。最后基于MOD(多变量异常检测)方法,本文实现了风力涡轮机的有效和准确性故障警告。案例验证本文中该方法的有效性。

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