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首页> 外文期刊>Electric Power Applications, IET >Detection of mixed eccentricity fault in doubly-fed induction generator based on reactive power spectrum
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Detection of mixed eccentricity fault in doubly-fed induction generator based on reactive power spectrum

机译:基于无功功率谱的双馈感应发电机混合偏心故障检测

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摘要

Wide application of wind energy in the world towards reduction of global warming, have made the low cost maintenance of these turbines very important. Basically, mechanical faults such as gear-box faults in these turbines lead to a long down time and consequently heavy financial loss. Generally, these faults cause eccentricity in the generator air gap, so by its early detection the fault can be largely prevented. In this paper, eccentricity fault detection is studied in doubly-fed induction generator (DFIG) which is the most established generator in wind turbines and also is more prone to mechanical faults compared to other technologies. One of frequency components of reactive power is introduced as eccentricity fault index. As the reactive power is always evaluated in the control system, there is no need to include a new hardware for fault detection. Finite elements method is used to model the wound rotor induction machine (WRIM) which is coupled with closed-loop control system. Following the validation of the model in the healthy case experimentally, eccentricity under different operating conditions is included in the modeling. Finally, a simple procedure based on simple signal processing methods is introduced for eccentricity fault diagnosis considering the operating conditions of the wind turbine.
机译:为了减少全球变暖,风能在世界范围内的广泛应用已经使这些涡轮机的低成本维护变得非常重要。基本上,这些涡轮机中的机械故障(例如齿轮箱故障)会导致较长的停机时间,并因此造成巨大的财务损失。通常,这些故障会导致发电机气隙偏心,因此通过早期发现,可以在很大程度上避免故障。在本文中,对双馈感应发电机(DFIG)进行了偏心故障检测的研究,该发电机是风力发电机中最成熟的发电机,与其他技术相比,它更容易出现机械故障。介绍了无功功率的频率分量之一作为偏心故障指标。由于总是在控制系统中评估无功功率,因此无需包括用于故障检测的新硬件。采用有限元方法对与闭环控制系统耦合的绕线转子感应电机(WRIM)进行建模。在健康情况下通过实验对模型进行验证之后,建模中将包括不同操作条件下的偏心率。最后,介绍了一种基于简单信号处理方法的简单程序,用于考虑风力涡轮机的运行状况进行偏心故障诊断。

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