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小波包与SVM用于压缩机在线故障检测的研究
引用本文:吴祖迥,樊可清.小波包与SVM用于压缩机在线故障检测的研究[J].五邑大学学报(自然科学版),2014(3):47-54.
作者姓名:吴祖迥  樊可清
作者单位:五邑大学信息工程学院,广东江门529020
摘    要:研究了滚动转子压缩机在线故障检测的方法.以压缩机壳体振动信号作为分析对象,应用小波包分解将信号分解至不同频带上,提取小波包分解系数的统计参数(包括有效值、方差、偏度和峭度)作为支持向量机(SVM)故障分类器的输入特征向量,用于判别正常与故障压缩机.测试结果表明:该方法用于转子式压缩机故障检测是有效的.

关 键 词:滚动转子式压缩机  在线故障检测  小波包分解  支持向量机  故障分类器

Wavelet Packets and SVM Applied to Compressor Online Fault Detection
WU Zu-Jiong,FAN Ke-qing.Wavelet Packets and SVM Applied to Compressor Online Fault Detection[J].Journal of Wuyi University(Natural Science Edition),2014(3):47-54.
Authors:WU Zu-Jiong  FAN Ke-qing
Institution:(School of Information Engineering, Wuyi University, Jiangmen 529020, China)
Abstract:A method of rolling rotor compressor online fault detection is discussed. With compressor casing vibration signals as object, the study decomposes signals to different frequency bands by means of wavelet packet decomposition, and then extracts the statistical parameters of wavelet packet coefficients, including RMS, variance, skewness and kurtosis. The parameters are used as the input feature vector for support vector machines (SVM) to distinguish normal and faulty compressors. Test results show that the method is effective for rotary compressor fault detection.
Keywords:rolling rotor compressors  online fault detection  wavelet packet decomposition  SVM  fault classifiers
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