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Detection of Single-Axis Pitch Bearing Defect in a Wind Turbine Using Electrical Signature Analysis

机译:电气签名分析检测风力发电机单轴变桨轴承的缺陷

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Recently, multiple wind turbine failure databases have reviewed that pitch bearings are one of the subassemblies with the highest failure rates, and largest contributors to overall downtime. If a monitoring technology is developed and can give an early warning about the pitch bearing condition, the maintenance process can be largely improved; downtime and losses can be minimized. Electrical signature analysis (ESA) has been extensively investigated for years to monitor wind turbine main drivetrain structural health condition, including generator bearings, multi-stage gearbox gears and bearings. ESA has advantages of being low cost, hardware free (no additional sensor is required), has minimum impacts on system normal operation, and can be directly applied to commercial drive units to provide an online remote condition-based monitoring solution. In this paper, ESA is used to monitor and trend deterioration of pitch bearing health condition. Various fault indicators (FIs) has been investigated, a detailed comparison indicates negative-sequence FI is the most sensitive to detect single-axis pitch bearing failure. This hardware-free solution is validated by both simulation and field data from MW-scale wind farms and turns out to be the first field-validated effort to use ESA to monitor pitch bearing health condition, and provide single-axis pitch bearing defect detection, as reported in the literature.
机译:近来,多个风力涡轮机故障数据库已检查出,变桨轴承是故障率最高,对总体停机时间造成影响最大的子组件之一。如果开发了一种监控技术并可以对变桨轴承的状况发出预警,则可以大大改善维护过程;停机时间和损失可以最小化。多年来,对电气特征分析(ESA)进行了广泛的研究,以监测风力涡轮机主要传动系统的结构健康状况,包括发电机轴承,多级变速箱齿轮和轴承。 ESA的优势是成本低,无需硬件(不需要额外的传感器),对系统正常运行的影响最小,并且可以直接应用于商用驱动器,以提供基于状态的在线远程监视解决方案。在本文中,ESA被用于监测并预测变桨轴承健康状况的恶化趋势。已对各种故障指示器(FI)进行了研究,详细比较表明负序FI对检测单轴变桨轴承故障最敏感。此无硬件解决方案已通过仿真和兆瓦级风电场的现场数据进行了验证,并且证明这是使用ESA监测变桨轴承健康状况并提供单轴变桨轴承缺陷检测的第一个现场验证工作,如文献报道。

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