Department of Electrical Engineering, Adani Institute of Infrastructure Engineering, Ahmedabad 382421, India.
Department of Electrical Engineering, Institute of Infrastructure Technology Research and Management, Ahmedabad 380026, India.
Sensors (Basel). 2020 Nov 25;20(23):6742. doi: 10.3390/s20236742.
The intelligent condition monitoring of wind turbines reduces their downtime and increases reliability. In this manuscript, a feature selection-based methodology that essentially works on regression models is used for identifying faulty scenarios. Supervisory control and data acquisition (SCADA) data with 1009 samples from one year and one month before failure are considered. Gearbox oil and bearing temperatures are treated as target variables with all the other variables used for the prediction model. Neighborhood component analysis (NCA) as a feature selection technique is employed to select the best features and prediction performance for several machine learning regression models is assessed. The results reveal that twin support vector regression (99.91%) and decision trees (98.74%) yield the highest accuracy for gearbox oil and bearing temperatures respectively. It is observed that NCA increases the accuracy and thus reliability of the condition monitoring system. Furthermore, the residuals from the class of support vector regression (SVR) models are tested from a statistical point of view. Diebold-Mariano and Durbin-Watson tests are carried out to establish the robustness of the tested models.
风力涡轮机的智能状态监测可减少其停机时间并提高可靠性。本文采用基于特征选择的方法,该方法主要基于回归模型,用于识别故障情况。考虑了从故障前一年一个月的 1009 个样本的监控与数据采集(SCADA)数据。将齿轮箱油和轴承温度作为目标变量,所有其他变量都用于预测模型。采用邻域成分分析(NCA)作为特征选择技术,评估了几种机器学习回归模型的最佳特征和预测性能。结果表明,对于齿轮箱油和轴承温度,双支持向量回归(99.91%)和决策树(98.74%)的准确率最高。可以看出,NCA 提高了状态监测系统的准确性和可靠性。此外,还从统计角度测试了支持向量回归(SVR)模型类的残差。进行了迪博尔德-马里亚诺和都宾-沃森检验,以确定所测试模型的稳健性。