Diagnosis and prognosis of in-service electric machine in the absence of historic data related to faults and faults progression

S. S. H. Zaidi
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引用次数: 1

Abstract

Extensive work has been presented in the literature related to fault diagnosis and prognosis of machines and related components. Prime focus of the proposed techniques is on either on assembly line checkout of machines or newly installed machines as a large number of methods are based on supervised learning. In this paper, fault diagnosis algorithm of in-service DC starter motor is presented. The proposed approach encompasses on the development of predefined fault progression curves. Features to develop these curves are extracted from machine current in time frequency domain. According to the proposed method, a number of curves are developed each of different order and slope. As the machine fault progresses, the fault features are projected on these curves and the % fault severity is identified. The results are presented and conclusions are made.
在没有与故障和故障进展相关的历史数据的情况下,在役电机的诊断和预测
关于机器和相关部件的故障诊断和预测,文献中已经提出了大量的工作。所提出的技术的主要焦点是机器的装配线检测或新安装的机器,因为大量的方法是基于监督学习的。提出了在役直流起动电机的故障诊断算法。所提出的方法包括预先定义的断层发展曲线的发展。从时频域的电机电流中提取出发展这些曲线的特征。根据所提出的方法,绘制了许多不同阶数和斜率的曲线。随着机器故障的进展,将故障特征投影到这些曲线上,并识别故障严重程度。给出了实验结果并得出了结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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