期刊
ENERGIES
卷 14, 期 20, 页码 -出版社
MDPI
DOI: 10.3390/en14206601
关键词
isolation forest; wind turbine; condition monitoring; pitch system; SCADA data; anomaly detection
资金
- EPSRC [EP/L016680/1]
The study utilizes the Isolation Forest Machine Learning model along with SCADA system data to monitor the condition of wind turbine pitch systems, enabling early prediction of potential faults and improving the scheduling of planned maintenance for pitch systems.
Wind turbine pitch system condition monitoring is an active area of research, and this paper investigates the use of the Isolation Forest Machine Learning model and Supervisory Control and Data Acquisition system data for this task. This paper examines two case studies, turbines with hydraulic or electric pitch systems, and uses an Isolation Forest to predict failure ahead of time. This novel technique compared several models per turbine, each trained on a different number of months of data. An anomaly proportion for three different time-series window lengths was compared, to observe trends and peaks before failure. The two cases were compared, and it was found that this technique could detect abnormal activity roughly 12 to 18 months before failure for both the hydraulic and electric pitch systems for all unhealthy turbines, and a trend upwards in anomalies could be found in the immediate run up to failure. These peaks in anomalous behaviour could indicate a future failure and this would allow for on-site maintenance to be scheduled. Therefore, this method could improve scheduling planned maintenance activity for pitch systems, regardless of the pitch system employed.
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