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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Wind turbine bearing fault diagnosis based on adaptive local iterative filtering and approximate entropy
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Wind turbine bearing fault diagnosis based on adaptive local iterative filtering and approximate entropy

机译:基于自适应局部迭代过滤和近似熵的风力涡轮机轴承故障诊断

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摘要

For the unsteady characteristics of a fault vibration signal from a wind turbine rolling bearing, a bearing fault diagnosis method based on adaptive local iterative filtering and approximate entropy is proposed. The adaptive local iterative filtering method is used to decompose original vibration signals into a finite number of stationary components. The components which comprise major fault information are selected for further analysis. The approximate entropy of the selected components is calculated as a fault feature value and input to a fault classifier. The classifier is based on the nearest neighbor algorithm. The vibration signals from a spherical roller bearing on a wind turbine in its normal state, with an outer race fault, an inner race fault and a roller fault are analyzed. The results show that the proposed method can accurately and efficiently identify the fault modes present in the rolling bearings of a wind turbine.
机译:对于来自风力涡轮机滚动轴承的故障振动信号的不稳定特性,提出了一种基于自适应局部迭代滤波和近似熵的轴承故障诊断方法。 自适应局部迭代滤波方法用于将原始振动信号分解为有限数量的固定组件。 选择包含主要故障信息的组件进行进一步分析。 所选组件的近似熵计算为故障特征值并输入故障分类器。 分类器基于最近的邻居算法。 分析了来自风力涡轮机的球形滚子轴承的振动信号,分析了外部竞争故障,内部竞争故障和滚子故障。 结果表明,该方法可以准确地有效地识别风力涡轮机的滚动轴承中存在的故障模式。

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