Planetary Gear Tooth Fault Detection using Stator Current Space Vector Analysis in Induction Machine-Based Systems

S. H. Kia, A. Hajjaji, Mohammad Hoseintabar Marzebali
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引用次数: 2

Abstract

The aim of this article is to present the planetary gear tooth fault detection using stator current space vector analysis in steady-state working condition of induction machine-based systems. For this study a universal method is used. The proposed technique is mainly relied on the computation of a transfer function which defines the response of the stator current space vector to the perturbations induced by gear tooth fault of the planetary gear located within the drive train. The idea of electrical-mechanical analogy is employed to facilitate the computation of the mentioned transfer function. This approach is considered as an upstream phase for studying the feasibility of gear tooth fault diagnosis using non-invasive measurement. A fault index is recommended for the fault severity evaluation at different levels of the mechanical load. The performance of the proposed fault index is validated through experiments using a representative induction machine-based test rig which includes a three-phase 5.5kW wound rotor induction machine connected to a fixed ring single-stage planetary gearbox.
基于定子电流空间矢量分析的感应电机行星齿轮齿故障检测
本文的目的是在感应电机系统稳态工作状态下,利用定子电流空间矢量分析方法进行行星齿轮齿故障检测。在这项研究中使用了一种通用的方法。该方法主要依赖于传递函数的计算,该传递函数定义了定子电流空间矢量对传动系内行星齿轮齿故障引起的扰动的响应。为了方便传递函数的计算,采用了机电类比的思想。该方法被认为是研究无创测量法诊断齿轮齿故障可行性的上游阶段。在不同的机械负荷水平下,建议采用故障指标来评价故障的严重程度。在具有代表性的感应电机试验台上,通过与固定环单级行星齿轮箱连接的三相5.5kW绕线转子感应电机,验证了所提故障指标的性能。
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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