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Feature Extraction of Demagnetization Faults in Permanent-Magnet Synchronous Motors Based on Box-Counting Fractal Dimension

机译:基于盒数分形维数的永磁同步电动机退磁故障特征提取

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摘要

This paper presents a methodology for feature extraction of a new fault indicator focused on detecting demagnetization faults in a surface-mounted permanent-magnet synchronous motors operating under nonstationary conditions. Preprocessing of transient-current signals is performed by applying Choi–Williams distribution to highlight the salient features of this demagnetization fault. In this paper, fractal dimension calculation based on the computation of the box-counting method is performed to extract the optimal features for diagnosis purposes. It must be noted that the applied feature-extraction process is autotuned, so it does not depend on the severity of the fault and is applicable to a wide range of operating conditions of the motor. The performance of the proposed system is validated experimentally. According to the obtained results, the proposed methodology is reliable and feasible for diagnosing demagnetization faults in industrial applications.
机译:本文提出了一种新的故障指示器的特征提取方法,该故障指示器的重点是检测在非平稳条件下运行的表面安装永磁同步电动机中的退磁故障。通过应用Choi–Williams分布来突出显示该退磁故障的显着特征,可以对瞬态电流信号进行预处理。在本文中,基于盒数计算的分形维数计算可提取用于诊断目的的最佳特征。必须注意的是,所应用的特征提取过程是自动调整的,因此它不取决于故障的严重性,并且适用于电动机的各种运行条件。提出的系统的性能已通过实验验证。根据获得的结果,所提出的方法在工业应用中诊断退磁故障是可靠且可行的。

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