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A case study of sample entropy analysis to the fault detection of bearing in wind turbine

机译:样本熵分析在风机轴承故障检测中的应用

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Rolling bearing is an important and fragile component in the wind turbine transmission system. The failure of rolling bearing is one of the highest risk events which may result in unexpected economic loss. To give a proper condition assessment of rolling bearing, especially for early fault detection, is of great importance and become an urgent issue to the wind energy industry. In this paper, sample entropy is studied through the field data of wind turbine transmission system measured from Lu Nan Wind Farm in China. Compared with several frequently used statistical indicators, sample entropy features advantages in detecting and evaluating the progress of the early faults of the rolling bearing. The studies show that the sample entropy is an effective and practical tool for condition monitoring of rolling bearing for a wind turbine transmission system.
机译:滚动轴承是风力涡轮机传动系统中重要且易碎的部件。滚动轴承的故障是最高风险的事件之一,可能会导致意外的经济损失。对滚动轴承进行适当的状态评估,特别是对于早期故障检测,具有极为重要的意义,并且已成为风能行业的紧迫问题。本文通过从中国鲁南风电场测得的风机传输系统的现场数据研究了样本熵。与几种常用的统计指标相比,样本熵在检测和评估滚动轴承早期故障的进展方面具有优势。研究表明,样本熵是一种用于风力涡轮机传动系统滚动轴承状态监测的有效实用工具。

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