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Fault diagnosis for a wind turbine transmission system based on manifold learning and Shannon wavelet support vector machine

机译:基于流形学习和香农小波支持向量机的风电传动系统故障诊断

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摘要

Fault diagnosis for wind turbine transmission systems is an important task for reducing their maintenance cost. However, the non-stationary dynamic operating conditions of wind turbines pose a challenge to fault diagnosis for wind turbine transmission systems. In this paper, a novel fault diagnosis method based on manifold learning and Shannon wavelet support vector machine is proposed for wind turbine transmission systems. Firstly, mixed-domain features are extracted to construct a high-dimensional feature set characterizing the properties of non-stationary vibration signals from wind turbine transmission systems. Moreover, an effective manifold learning algorithm with non-linear dimensionality reduction capability, orthogonal neighborhood preserving embedding (ONPE), is applied to compress the high-dimensional feature set into low-dimensional eigenvectors. Finally, the low-dimensional eigenvectors are inputted into a Shannon wavelet support vector machine (SWSVM) to recognize faults. The performance of the proposed method was proved by successful fault diagnosis application in a wind turbine's gearbox. The application results indicated that the proposed method improved the accuracy of fault diagnosis.
机译:风力涡轮机传动系统的故障诊断是降低其维护成本的重要任务。然而,风力涡轮机的非平稳动态工况对风力涡轮机传输系统的故障诊断提出了挑战。提出了一种基于流形学习和香农小波支持向量机的故障诊断方法。首先,提取混合域特征以构建高维特征集,以表征来自风力涡轮机传输系统的非平稳振动信号的特性。此外,采用了一种具有非线性降维能力的有效流形学习算法,即正交邻域保留嵌入(ONPE),将高维特征集压缩为低维特征向量。最后,将低维特征向量输入到Shannon小波支持向量机(SWSVM)中以识别故障。通过故障诊断在风力发电机齿轮箱中的成功应用,证明了该方法的性能。应用结果表明,该方法提高了故障诊断的准确性。

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