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Wind Turbine Gearbox Condition Monitoring with AAKR and Moving Window Statistic Methods

机译:AAKR和移动窗口统计方法的风力发电机齿轮箱状态监测

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摘要

Condition Monitoring (CM) of wind turbines can greatly reduce the maintenance costs for wind farms, especially for offshore wind farms. A new condition monitoring method for a wind turbine gearbox using temperature trend analysis is proposed. Autoassociative Kernel Regression (AAKR) is used to construct the normal behavior model of the gearbox temperature. With a proper construction of the memory matrix, the AAKR model can cover the normal working space for the gearbox. When the gearbox has an incipient failure, the residuals between AAKR model estimates and the measurement temperature will become significant. A moving window statistical method is used to detect the changes of the residual mean value and standard deviation in a timely manner. When one of these parameters exceeds predefined thresholds, an incipient failure is flagged. In order to simulate the gearbox fault, manual temperature drift is added to the initial Supervisory Control and Data Acquisitions (SCADA) data. Analysis of simulated gearbox failures shows that the new condition monitoring method is effective.
机译:风力发电机的状态监测(CM)可以大大降低风电场的维护成本,特别是对于海上风电场。提出了一种利用温度趋势分析的风力发电机齿轮箱状态监测的新方法。自相关核回归(AAKR)用于构建变速箱温度的正常行为模型。通过适当构造存储矩阵,AAKR模型可以覆盖变速箱的正常工作空间。当变速箱发生早期故障时,AAKR模型估计值与测量温度之间的残差将变得很明显。使用移动窗口统计方法来及时检测残留平均值和标准偏差的变化。当这些参数之一超过预定义的阈值时,将标记为初期故障。为了模拟变速箱故障,将手动温度漂移添加到了初始监控和数据采集(SCADA)数据中。对变速箱模拟故障的分析表明,新的状态监测方法是有效的。

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