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Degradation State Identification of Cracked Ultrasonic Motor by Means of Fault Feature Extraction Method

机译:借助于故障特征提取法降解裂纹超声波电动机的状态识别

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The cracking of piezoelectric ceramics is the main reason of failure of an ultrasonic motor. Since the fault information is too weak to reflect the condition of piezoelectric ceramics especially in the early degradation stage, a fault feature extraction method based on multiscale morphological spectrum and permutation entropy is proposed. Firstly, a signal retaining the morphological feature under different scales is reconstructed with multiscale morphological spectrum components. Then, the permutation entropy of the reconstructed signal is taken as the fault feature of piezoelectric ceramics. Furthermore, a sensitivity factor is defined to optimize the embedded dimension and delay time of permutation entropy according to double sample Z value analysis. Finally, a matrix composed of the probability distributions, obtained from permutation entropy calculation, is applied for the degradation state identification by means of probability distribution divergence. The analysis of actual test data demonstrates that this method is feasible and effective.
机译:压电陶瓷的破裂是超声波电动机失效的主要原因。由于故障信息太弱而无法反映压电陶瓷的条件,特别是在早期降解阶段,提出了一种基于多尺度形态光谱和排列熵的故障特征提取方法。首先,用多尺度形态谱组分重建保持不同尺度下的形态特征的信号。然后,将重建信号的置换熵作为压电陶瓷的故障特征。此外,定义灵敏度因子以优化根据双样本Z值分析的嵌入式熵延迟和延迟时间。最后,通过概率分布发散施加由置换熵计算获得的概率分布组成的矩阵。对实际测试数据的分析表明,该方法是可行和有效的。

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