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Application of Hidden Semi-Markov Models Based on Wavelet Correlation Feature Scale Entropy in Equipment Degradation State Recognition

机译:基于小波相关特征缩放熵在设备下降状态识别中的隐藏半马尔可夫模型的应用

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In order to correctly recognize the current state of equipment for preventing equipment farther degradation and occurrence of failure, A new method of equipment degradation state recognition Based on Wavelet Correlation Feature Scale Entropy (W{sub}(CFSE)) and Hidden Semi-Markov Models (HSMM) was proposed. Firstly, the gathered vibration signal of equipment was processed by the way of the Wavelet Transform Correlation Filter (WTCF), in order to get the high Signal-to-Noise scales wavelet coefficients, the conception of W{sub}(CFSE) was presented based on integration of information entropy theory and WTCF, and then constructed W{sub}(CFSE) eigenvectors of signal. Those W{sub}(CFSE) eigenvectors were inputted to the HSMM for training, running states classified model of equipment based on HSMM was constructed to recognize the equipment degradation states. A roller bearing was taken as an example and several states of roller with normal state and different fault severity states were recognized by the proposed method, Experiment results show that this proposed method is very effective.
机译:为了正确认识到预防设备的当前设备状态进一步劣化和发生故障,基于小波相关特征缩放熵的设备降级状态识别的新方法(W {Sub}(CFSE))和隐藏半宝马型号(HSMM)提出。首先,通过小波变换相关滤波器(WTCF)的方式处理设备的聚集振动信号,以便获得高信噪比小波系数,呈现了W {Sub}(CFSE)的概念基于信息熵理论和WTCF的集成,然后构建信号的W {Sub}(CFSE)特征向量。将那些W {Sub}(CFSE)输入到HSMM进行培训,建立了基于HSMM的运行状态的分类模型,以识别设备劣化状态。将滚子轴承作为示例,并通过所提出的方法认识到具有正常状态和不同故障严重性状态的几个辊子状态,实验结果表明该方法非常有效。

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