基于小波包和SVM的风机齿轮箱故障诊断方法
Wind Turbine Gearbox Fault Diagnosis Method Based on Wavelet Packet and SVM
DOI: 10.12677/OJAV.2013.14006, PDF, 下载: 2,735  浏览: 10,145 
作者: 欧淇源, 姚为星, 周求湛:吉林大学通信工程学院,长春;程文阁, 吴艳茹:天津海运职业学院,天津
关键词: 风力发电机齿轮箱小波包SVM故障诊断Wing Turbine; Gearbox; Wavelet Packet Transform; SVM; Fault Diagnosis
摘要: 为了对风力发电机组中故障高发的核心部件齿轮箱进行实时监控及故障分析,提出了一种根据齿轮箱在工作时不同部位所产生的振动信号及齿轮箱常见故障事件的分析方法。首先设计了一套风机工作信号感知系统,采用高精度传感器获取齿轮箱工作信号;其次,根据齿轮箱工作时的振动信号特性,通过小波包变换方法对工作信号进行特征提取;将这些特征值送到支持向量机(SVM)中进行训练和分类,可以实现故障的智能诊断;最后得出分析结果,通过在实验室现有的齿轮箱实验台进行验证,在小样本情况下能达到了97.5%以上的分类精度
Abstract: In order to monitor gearbox real-timely, which is the core component of wind turbine, a method is put forward. This method is based on some vibration signals that are caused by different parts of gearbox at work and common faults of gearbox. Firstly, a gearbox working signal acquiring system is created. It uses high precision sensors to acquire signals when the wind turbine gearbox is working. Secondly, according to features of vibration signals of gearbox at work, using wavelet packet transform method can extract characteristics from working signals. Sending those data to Support Vector Machine (SVM), the system can implement intelligent fault diagnosis. At last, through experiments under laboratory condition, this method can reach more than 97.5% classification accuracy in the case of small sample.
文章引用:欧淇源, 姚为星, 周求湛, 程文阁, 吴艳茹. 基于小波包和SVM的风机齿轮箱故障诊断方法[J]. 声学与振动, 2013, 1(4): 37-43. http://dx.doi.org/10.12677/OJAV.2013.14006

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