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Data mining with improved Apriori algorithm on wind generator alarm data

机译:改进的Apriori算法对风力发电机组报警数据进行数据挖掘

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Alarm system is an important subsystem of Supervisory Control and Data Acquisition (SCADA) system in wind turbines. Because of the bad operating environment and condition switching frequently, this system has the problems of alarm too frequently and too large amount of alarm data which greatly reduce the effectiveness of the alarm system. Remove the excessive redundant alarm and refine the valid information are significant to early find wind turbines abnormal operation, to research the causal connection between different faults and to reduce the operators' workload. Data mining is an effective way to solve this problem. This paper used association rules on improved Apriori algorithm to analysis the alarm information which happened before and after blade angle asymmetry fault. Combined with the running mechanism of variable-pitch systems, we find the implied causal relationships between faults, then filter out minor redundant information, refine effective leading fault alarms and at last greatly reduce the number of alarm, improve the operators' work efficiency.
机译:警报系统是风力涡轮机中的监控和数据采集(SCADA)系统的重要子系统。由于恶劣的工作环境和频繁的工况切换,该系统存在报警频繁,报警数据过多的问题,大大降低了报警系统的有效性。消除过多的冗余警报,完善有效信息,对于及早发现风机异常运行,研究不同故障之间的因果关系,减轻操作人员的工作量具有重要意义。数据挖掘是解决此问题的有效方法。本文采用改进的Apriori算法的关联规则,对叶片角度不对称故障前后的告警信息进行分析。结合变桨系统的运行机理,我们发现了故障之间隐含的因果关系,然后过滤出了少量的冗余信息,细化了有效的主要故障预警,最后大大减少了警报数量,提高了操作人员的工作效率。

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