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基于S-SLLE的风电机组齿轮箱故障诊断方法研究
引用本文:王翔,王金平,许万军.基于S-SLLE的风电机组齿轮箱故障诊断方法研究[J].太阳能学报,2022,43(3):343-349.
作者姓名:王翔  王金平  许万军
作者单位:南京工程学院能源与动力工程学院,南京 211167
基金项目:南京工程学院科研基金(ZKJ201606;ZKJ201703);
摘    要:针对风电机组齿轮箱结构复杂、受交变载荷和恶劣工作环境影响容易出现故障导致停机的问题,提出基于统计学K-均值聚类理论的统计型监督式局部线性嵌入流形学习(S-SLLE)特征维数约简方法,首先通过对齿轮箱振动信号时频域故障特征提取,剔除冗余特征向量,减少诊断模型的复杂度和计算量,再利用RBF核支持向量机分类器建立诊断模型,对...

关 键 词:风电机组  特征提取  支持向量机  流形学习  齿轮箱振动故障
收稿时间:2020-06-28

FAULT DIAGNOSIS METHOD OF WIND TURBINE GEARBOX BASED ON S-SLLE
Wang Xiang,Wang Jinping,Xu Wanjun.FAULT DIAGNOSIS METHOD OF WIND TURBINE GEARBOX BASED ON S-SLLE[J].Acta Energiae Solaris Sinica,2022,43(3):343-349.
Authors:Wang Xiang  Wang Jinping  Xu Wanjun
Affiliation:School of Energy and Engineering, Nanjing Institute of Technology, Nanjing 211167, China
Abstract:Because of the complicated structure of wind turbine gearbox, it is easy to be shut down due to the influence of alternating load and harsh working environment. In order to improve the recognition rate of fault diagnosis model, the feature dimension reduction method of the statistical supervised locally linear embedding manifold learning(S-SLLE) based on K-means classification theory was proposed. Firstly, the time-frequency domain fault features of gearbox vibration signals are extracted, and the redundancy feature vector are taken out, so the complexity and calculation amount of the diagnosis model are reduced,then the diagnosis model based on the RBF kernel support vector machine classifier is used to establish to diagnose and identify the feature vector extracted by S-SLLE. Finally, the Machinery Fault Simulator was used to simulate multiple vibration fault experiments on the gearbox. Through the analysis and processing of the experimental fault signals, the results verify that the proposed S-SLLE RBF-SVM diagnosis model can identify the wind turbine gearbox fault effectively and accurately.
Keywords:wind turbines  feature extraction  support vector machines  manifold learning  gearbox vibration fault  
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