Comparison of PMSMs Motor Current Signature Analysis and Motor Torque Analysis Under Transient Conditions.

A. Bonci, M. Indri, Renat Kermenov, S. Longhi, Giacomo Nabissi
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引用次数: 2

Abstract

PMSMs are widely used in applications on electric vehicles, robotics and mechatronic systems of industrial machinery. Thus it becomes increasingly interesting to prevent their fault or malfunctioning with Predictive Maintenance (PdM). However, reaching this outcome could be difficult, especially if the stationary condition is not achieved and without additional sensors. This paper examines the use of a load torque observer based on Extended Kalman Filter for the diagnosis of electric drives working under non-stationary conditions. The proposed Motor Torque Analysis (MTA) is compared with the Motor Current Signature Analysis by evaluating their diagnostic capabilities under the assumed conditions. Finally, the results of bearing failure detection under non-stationary conditions are presented, highlighting the superior diagnostic capabilities of the MTA under such conditions.
暂态条件下永磁同步电机电流特征分析与电机转矩分析的比较。
永磁同步电动机广泛应用于电动汽车、机器人和工业机械的机电系统。因此,通过预测性维护(PdM)来防止它们的故障或故障变得越来越有趣。然而,达到这个结果可能是困难的,特别是如果没有达到固定条件和没有额外的传感器。本文研究了基于扩展卡尔曼滤波的负载转矩观测器在非平稳工况下电力传动诊断中的应用。通过比较电机扭矩分析(MTA)和电机电流特征分析(MTA)在假设条件下的诊断能力。最后,给出了非平稳条件下轴承故障检测的结果,突出了MTA在这种条件下优越的诊断能力。
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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