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Recognition and assessment of different factors which affect flicker in wind turbines

机译:识别和评估影响风力涡轮机闪烁的不同因素

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摘要

Similar to other distributed generation sources, wind turbines cause power quality disturbances (PQDs) issues in power systems. One of the most important PQDs that has bad effects on sensitive loads is flicker. In this study, an algorithm is presented for assessment and recognition of different factors causing flicker of wind turbines. Some aerodynamic factors (wind shear and tower shadow) and some mechanical factors (blade pitching errors, gearbox tooth crash and turbine blade break down) are modelled using fixed speed wind turbines. Then, wavelet transform and S-transform are used to extract some dominant features voltage. Then, in order to avoid large dimension of feature vector, Relieff feature selection method is applied to extracted features. The probabilistic neural network (PNN) is used to classify above-mentioned factors. The only adjusted parameter of the PNN classifier is determined by using the particle swarm optimisation technique. Moreover, the short-term severity of flicker (Pst) is calculated for each type of fault as extra features to increase the severability of extracted features. Results show that the classifier can detect different causes of flicker event with high detection accuracy.
机译:与其他分布式发电源相似,风力涡轮机会在电力系统中引起电能质量扰动(PQD)问题。对敏感负载有不良影响的最重要的PQD之一是闪烁。在这项研究中,提出了一种算法,用于评估和识别导致风力涡轮机闪烁的不同因素。使用定速风力涡轮机对一些空气动力学因素(风切变和塔架阴影)和一些机械因素(叶片变桨误差,齿轮箱齿碰撞和涡轮叶片损坏)进行建模。然后,利用小波变换和S变换提取一些主导特征电压。然后,为了避免特征向量的维数过大,将Relieff特征选择方法应用于提取的特征。概率神经网络(PNN)用于对上述因素进行分类。使用粒子群优化技术确定PNN分类器的唯一调整参数。此外,对于每种类型的故障,作为增加额外特征以增加提取特征的可分割性的方式,计算其短期闪烁严重性(Pst)。结果表明,该分类器能够以较高的检测精度检测闪烁事件的不同原因。

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