CHEN Xiugao, SONG Yujia, SUN Xiaoyan, et al. Data-knowledge driven prediction of tower vibration state of wind turbines operating under variable operating conditions[J]. Thermal power generation, 2023, 52(3): 58-66.
DOI:
CHEN Xiugao, SONG Yujia, SUN Xiaoyan, et al. Data-knowledge driven prediction of tower vibration state of wind turbines operating under variable operating conditions[J]. Thermal power generation, 2023, 52(3): 58-66. DOI: 10.19666/j.rlfd.202209222.
Data-knowledge driven prediction of tower vibration state of wind turbines operating under variable operating conditions
摘要
为有效监测塔筒异常振动,保障机组运行安全,提出数据-知识驱动的基于长短时记忆(long-short term memory
In order to effectively monitor the abnormal tower vibration and ensure the unit operation safety
a dataknowledge-driven variable condition tower vibration prediction method based on long-short term memory(LSTM)and empirical mode decomposition(EMD)-eXtreme gradient boosting(XGBoost) algorithm step-by-step modeling is proposed. Firstly
the relationship between environmental and operational variables is stripped out based on the analysis of the unit's operating mechanism and the wind turbine SCADA operating parameters that affect tower vibration are identified. Then
the ultra-short term prediction of unit environmental wind speed and operating power is realized based on LSTM
and the unit data knowledge model is established based on the full working condition historical operating data. Finally
Hilbert-Huang transform(HHT) is used to decompose the vibration signal and extract the low frequency vibration of the tower
and build a tower vibration prediction model based on XGBoost algorithm. Through inputting the predictive variables
the prediction results of the tower low frequency vibration are output
and the prediction interval is determined. The results show that
the tower vibration prediction model can effectively predict the tower vibration