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Customized lifting multiwavelet packet information entropy for equipment condition identification

机译:定制的提升小波包信息熵用于设备状态识别

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Condition identification of mechanical equipment from vibration measurement data is significant to avoid economic loss caused by unscheduled breakdowns and catastrophic accidents. However, this task still faces challenges due to the complexity of equipment and the harsh environment. This paper provides a possibility for equipment condition identification by proposing a method called customized lifting multiwavelet packet information entropy. Benefiting from the properties of multi-resolution analysis and multiple wavelet basis functions, the multiwavelet method has advantages in characterizing non-stationary vibration signals. In order to realize the accurate detection and identification of the condition features, a customized lifting multiwavelet packet is constructed via a multiwavelet lifting scheme. Then the vibration signal from the mechanical equipment is processed by the customized lifting multiwavelet packet transform. The relative energy in each frequency band of the multiwavelet packet transform coefficients that equals a percentage of the whole signal energy is taken as the probability. The normalized information entropy is obtained based on the relative energy to describe the condition of a mechanical system. The proposed method is applied to the condition identification of a rolling mill and a demountable disk-drum aero-engine. The results support the feasibility of the proposed method in equipment condition identification.
机译:根据振动测量数据对机械设备进行状态识别对于避免因计划外故障和灾难性事故而造成的经济损失非常重要。但是,由于设备的复杂性和恶劣的环境,该任务仍然面临挑战。通过提出一种称为定制提升多小波包信息熵的方法,本文为设备状态识别提供了一种可能。得益于多分辨率分析和多个小波基函数的特性,多小波方法在表征非平稳振动信号方面具有优势。为了实现对状态特征的准确检测和识别,通过多小波提升方案构造了定制的提升小波包。然后,通过定制的提升多小波包变换处理来自机械设备的振动信号。将多小波包变换系数的每个频带中的相对能量等于整个信号能量的百分比作为概率。基于相对能量获得归一化信息熵,以描述机械系统的状态。该方法适用于轧机和可拆卸盘鼓式航空发动机的状态识别。结果证明了该方法在设备状态识别中的可行性。

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