A NBM based on P-N relationship for DFIG wind turbine fault detection

Ran Bi, C. Zhou, D. Hepburn, Jin Rong
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引用次数: 2

Abstract

Supervisory control and data acquisition (SCADA) data has been widely applied to identify abnormal conditions in wind turbine generators (WTG). One approach was to apply Artificial Intelligence (AI) to SCADA data, comparing the predicted power output of a WTG and its actual output and using the prediction error as an indicator to detect faults. However, complicated training processes limit its application. This paper presents a normal behavior model (NBM), based on power output-generator speed (P-N) curve, to analyze SCADA data from modern pitch regulated WTGs for detecting anomalies. Through analysis of the operational characteristics of the pitch regulated WTG, it is found that inaccuracies in wind speed measurement, the inertia of the rotor, yaw and pitch misalignments, and air density fluctuation may affect the performance of the power curve monitoring algorithms. This paper shows that under normal conditions the P-N curve based NBM performs better when fitting the SCADA data to WTG output under normal conditions than the power curve. Results demonstrate that it can give alarm to forthcoming faults earlier than the existing condition monitoring system (CMS).
基于P-N关系的NBM在DFIG风机故障检测中的应用
监控与数据采集(SCADA)数据被广泛应用于风力发电机组的异常状态识别。一种方法是将人工智能(AI)应用于SCADA数据,将WTG的预测输出功率与实际输出功率进行比较,并将预测误差作为检测故障的指标。然而,复杂的训练过程限制了其应用。本文提出了一种基于输出功率-发电机转速(P-N)曲线的正常行为模型(NBM),用于分析现代螺距调节wtg的SCADA数据以检测异常。通过对螺距调节WTG运行特性的分析,发现风速测量不准确、转子惯性、偏航和螺距失调以及空气密度波动都会影响功率曲线监测算法的性能。本文表明,在正常情况下,基于P-N曲线的NBM在将SCADA数据拟合到正常情况下的WTG输出时优于功率曲线。结果表明,该系统比现有的状态监测系统(CMS)更早地对即将发生的故障进行预警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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