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Anomaly detection of online monitoring data of power equipment based on association rules and clustering algorithm

机译:基于关联规则与聚类算法的电力设备在线监测数据的异常检测

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With the continuous research and development of smart grid and energy Internet, as well as the rapid construction of power transmission and transformation equipment in various places, the amount of data collected from the equipment is also increasing. To dig out the effective information must be to ensure the accuracy of the data. However, large data set must contain erroneous or abnormal data. The traditional method cannot handle the big data anomaly detection well. Therefore, this paper presents anomaly detection based on association rules and clustering algorithms. The association rules are used to find out the sequences with relevance in the dataset. Then the FCM algorithm are used to separate the abnormal data into a sensor abnormal that can be cleaned and a device abnormality that cannot be cleaned. For the correlation sequence, the sensor anomaly and the device abnormality are found by the method of association and clustering, then early warning and maintenance advice are given.
机译:随着智能电网和能源互联网的不断研发,以及各个地方的电力传输和转化设备的快速建设,从设备收集的数据量也在增加。 要挖掘有效信息必须是确保数据的准确性。 但是,大型数据集必须包含错误或异常数据。 传统方法无法处理大数据异常检测良好。 因此,本文介绍了基于关联规则和聚类算法的异常检测。 关联规则用于查找数据集中具有相关性的序列。 然后,FCM算法用于将异常数据分离成可以清洁的传感器异常,并且无法清除的设备异常。 对于相关序列,通过关联和聚类方法发现传感器异常和器件异常,然后给出预警和维护建议。

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