Abst'/> Performance analysis of electrical signature analysis-based diagnostics using an electromechanical model of wind turbine
首页> 外文期刊>Renewable energy >Performance analysis of electrical signature analysis-based diagnostics using an electromechanical model of wind turbine
【24h】

Performance analysis of electrical signature analysis-based diagnostics using an electromechanical model of wind turbine

机译:使用风力发电机机电模型的基于电特征分析的诊断性能分析

获取原文
获取原文并翻译 | 示例
       

摘要

AbstractElectrical signature analysis-based (ESA-based) diagnostics of powertrain faults in wind turbines (WTs) is a promising alternative to the more traditional vibration-based condition monitoring. However, the attempt to identify mechanical faults in electrical signals requires the consideration of the complex electromechanical dynamics of the WT. This paper investigates the potential masking effect of power electronic switching and wind-induced speed fluctuations on the electrical signatures of typical powertrain mechanical faults (i.e. rotor imbalance, gear cracks and other localised faults). To identify the conditions in which these masking effects arise and their severity, an innovative full electromechanical model of a WT has been developed, based on the integration of previously proposed models of WT sub-systems, and with the addition of powertrain fault models. This numerical controlled environment allows assessing the impact of power electronics and wind-speed fluctuation on the detectability of powertrain faults by ESA. The results show the criticality of switching-induced noise over the whole range of simulated faults, whereas turbulence-induced noise is mainly affecting the detectability of low frequency signatures. An order-of-magnitude sensitivity analysis is provided for the selected faults and their interaction with the two masking effects, thus providing valuable indications for the development of WT ESA-based condition monitoring systems.HighlightsElectromechanical model of wind turbine with integrated drivetrain fault models.Masking effect of converter switching and wind induced speed variation.Electrical Signature Analysis-based diagnostics of drivetrain mechanical faults.
机译: 摘要 基于电子签名分析(基于ESA)的风力涡轮机(WT)动力总成故障诊断是一种较有希望的替代方案基于振动的状态监测。但是,尝试识别电信号中的机械故障需要考虑WT的复杂机电动力学。本文研究了电力电子开关和风速波动对典型动力总成机械故障(即转子不平衡,齿轮裂纹和其他局部故障)的电气特征的潜在掩盖效应。为了确定出现这些掩蔽效应的条件及其严重性,基于先前提议的WT子系统模型的集成以及动力总成故障模型​​的开发,开发了一种创新的WT完整机电模型。这种数控环境可以评估电力电子设备和风速波动对ESA可检测动力总成故障的影响。结果表明,在整个模拟故障范围内,开关引起的噪声是至关重要的,而湍流引起的噪声主要影响低频特征的可检测性。针对所选故障及其与两种掩蔽效应的相互作用提供了数量级敏感性分析,从而为基于WT ESA的状态监测系统的开发提供了有价值的指示。 突出显示 具有集成的传动系统故障模型的风力发电机的机电模型。 屏蔽效果转换器切换和风力引起的速度变化。 基于电子签名分析的动力传动系统机械故障诊断。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号