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Online nonintrusive condition monitoring and fault detection for wind turbines.

机译:在线非侵入式状态监测和风力涡轮机故障检测。

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摘要

The goal of this dissertation research is to develop online nonintrusive condition monitoring and fault detection methods for wind turbine generators (WTGs). The proposed methods use only the current measurements that have already been used by the control and protection systems of WTGs; no additional sensors or data acquisition devices are needed. Current-based condition monitoring and fault detection techniques have great economic benefits and the potential to be adopted by the wind energy industry. However, there are challenges in using current measurements for wind turbine condition monitoring and fault detection. First, it is a challenge to extract WTG fault signatures from nonstationary current measurements, due to variable-speed operating conditions of WTGs. Moreover, the useful information in current measurements for wind turbine condition monitoring and fault detection usually has a low signal to noise ratio, which makes the condition monitoring and fault detection difficult.;WTG faults can be classified into two categories: the faults with characteristic frequencies (i.e., Type 1 faults) and the faults without characteristic frequencies (i.e., type 2 faults). For type 1 faults, appropriate demodulation methods have been proposed to calculate the frequency and the amplitude of the current measurements. Two 1P-invariant power spectrum density (PSD) method have then been proposed to use appropriate resampling algorithms to convert the variable characteristic frequencies of WTG faults in the frequency domain of the current demodulated signals to constant values, where 1P stands for the shaft rotating frequency of the WTG. An impulse detection method has then been designed to find out the excitations in the 1P-invariant PSD of the current demodulated signals, where the excitations at the characteristic frequencies of WTG faults are extracted as the fault signatures. Finally, a fault signature evaluator has been designed to evaluate the WTG condition for fault detection. For Type 2 faults, a wavelet filter-based method has been developed to generate the fault index, which is then evaluated by a statistical control method-based fault index evaluator for fault detection. The proposed methods have been validated by extensive computer simulations and experiments for small direct-drive WTGs.
机译:本文的研究目的是开发用于风力发电机的在线非侵入式状态监测和故障检测方法。所提出的方法仅使用WTG的控制和保护系统已经使用的当前测量值。无需其他传感器或数据采集设备。基于电流的状态监视和故障检测技术具有巨大的经济效益,并且具有被风能行业采用的潜力。然而,将电流测量值用于风力发电机状态监测和故障检测存在挑战。首先,由于WTG的变速运行条件,从非稳态电流测量中提取WTG故障特征是一个挑战。此外,在电流测量中用于风力发电机状态监测和故障检测的有用信息通常具有较低的信噪比,这使得状态监测和故障检测变得困难。WTG故障可分为两类:具有特征频率的故障(即1型故障)和没有特征频率的故障(即2型故障)。对于1类故障,已经提出了适当的解调方法来计算电流测量的频率和幅度。然后,提出了两种1P不变功率谱密度(PSD)方法,以使用适当的重采样算法将当前解调信号的频域中WTG故障的可变特征频率转换为恒定值,其中1P代表轴旋转频率WTG。然后设计了一种脉冲检测方法,以找出当前解调信号的1P不变PSD中的激励,其中提取了WTG故障特征频率处的激励作为故障信号。最后,设计了一个故障签名评估器来评估WTG条件以进行故障检测。对于2类故障,已开发出一种基于小波滤波器的方法来生成故障指数,然后通过基于统计控制方法的故障指数评估器对其进行评估,以进行故障检测。所提出的方法已经通过广泛的计算机仿真和小型直驱WTG的实验验证。

著录项

  • 作者

    Gong, Xiang.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 169 p.
  • 总页数 169
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:27

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