引用本文:郭鹏,王兆光.基于高斯过程回归和双滑动窗口残差处理的风电机组主轴状态监测[J].电力自动化设备,2018,(6):
GUO Peng,WANG Zhaoguang.Wind turbine spindle state monitoring based on Gaussian process regression and double moving window residual processing[J].Electric Power Automation Equipment,2018,(6):
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基于高斯过程回归和双滑动窗口残差处理的风电机组主轴状态监测
郭鹏, 王兆光
华北电力大学控制与计算机工程学院,北京102206
摘要:
针对风电机组运行数据强随机性和高噪声的特点,采用高斯过程回归方法建立主轴正常时段的温度模型,并应用自动关联分析方法选择主轴温度模型的建模变量。为降低建模复杂程度,采用模糊核聚类方法对风电机组原始运行数据进行筛选,消除冗余信息,构造紧凑有效的建模样本集。当主轴发生故障时,模型的输入观测向量发生异常变化,导致模型预测残差发生明显改变。为提高主轴异常预警的灵敏度和可靠性,采用基于莱依特准则的双滑动窗口对预测残差序列进行实时的统计分析,如果残差均值或标准差超出设定的故障报警阈值,则发出报警信息。某风电机组主轴的实际运行数据验证了所提方法的有效性。
关键词:  风电  主轴  状态监测  高斯过程回归  自动关联分析  模糊核聚类  残差  双滑动窗口
DOI:10.16081/j.issn.1006-6047.2018.06.006
分类号:TK83;TM315
基金项目:国家自然科学基金资助项目(51677067)
Wind turbine spindle state monitoring based on Gaussian process regression and double moving window residual processing
GUO Peng, WANG Zhaoguang
School of Control and Computer Engineering, North China Electric Power University, Beijing 102206, China
Abstract:
Aiming at the strong randomness and high noise of the wind turbine operating data, the temperature model of the normal wind turbine spindle is established by the Gaussian process regression method, the input variables of which are selected by ARD(Automatic Relevance Determination) method. In order to reduce the complexity of modeling, the fuzzy kernel clustering method is used to filter the original operating data of wind turbine, and the redundant information is eliminated to construct a compact and effective modeling sample set. When the wind turbine spindle malfunctions, the input variables may abnormally change, which leads to the obvious variation of predicted residuals of the model. In order to improve the sensitivity and reliability of the early warning of spindle abnormity, the double moving window based on the Lewitt criteria is used to calculate the statistic properties of the residual sequence. If the mean value or standard deviation of residual exceeds the set fault alarm threshold, an alarm message will be issued. The actual operating data of wind turbine spindle verify the validity of the proposed method.
Key words:  wind power  spindle  condition monitoring  Gaussian process regression  ARD  fuzzy kernel clustering  residual  double moving window

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