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首页> 外文期刊>Transactions of the Institute of Measurement and Control >Fault diagnosis of a wind turbine rolling bearing using adaptive local iterative filtering and singular value decomposition
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Fault diagnosis of a wind turbine rolling bearing using adaptive local iterative filtering and singular value decomposition

机译:使用自适应局部迭代滤波和奇异值分解的风力涡轮机滚动轴承故障诊断

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摘要

Adaptive local iterative filtering (ALIF) is a new signal decomposition method that uses the iterative filters strategy together with an adaptive and data-driven filter length selection to achieve the decomposition. The complexity of wind power generation systems means that the randomness and kinetic mutation behaviour of their vibration signals are demonstrated at different scales. Thus it is necessary to analyse the vibration signal across multiple scales. A method based on ALIF and singular value decomposition (SVD) was used for the fault diagnosis of a wind turbine roller bearing. The ALIF method is used to decompose the bearing vibration signal into several stable components. The components, which contain major fault information, are selected to build an initial feature vector matrix. The singular value of the matrix is computed as the feature vectors of each bearing fault. The feature vectors embody the characteristics of the vibration signal. The nearest neighbour algorithm is used as a classifier to identify faults in a roller bearing. Experimental data show that the proposed method can be used to identify roller bearing faults of a wind turbine.
机译:自适应局部迭代滤波(ALIF)是一种新的信号分解方法,它使用迭代过滤器策略以及自适应和数据驱动的滤波器长度选择以实现分解。风力发电系统的复杂性意味着它们振动信号的随机性和动力学突变行为在不同的尺度上进行了说明。因此,有必要分析跨多个尺度的振动信号。基于ALIF和奇异值分解(SVD)的方法用于风力涡轮机滚子轴承的故障诊断。 ALIF方法用于将轴承振动信号分解成几个稳定的部件。选择包含主要故障信息的组件以构建初始特征向量矩阵。矩阵的奇异值被计算为每个轴承故障的特征向量。特征向量体现了振动信号的特性。最近的邻居算法用作分类器,以识别滚子轴承中的故障。实验数据表明,该方法可用于识别风力涡轮机的滚子轴承故障。

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