Towards real time automated early gear failure detection

Q3 Engineering
Govindraj Sannellappanavar, Ellen Bergseth, Eva Lundberg
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引用次数: 0

Abstract

The ability to stop a gear fatigue test before catastrophic failure has many advantages. However, today, a widely accepted approach is not available. This case study applies a vibration-based condition monitoring methodology to detect early gear failures. The gear studied takes part in an all-wheel-drive drivetrain system. Vibration signals from four run-to-failure fatigue tests at two constant torque-speed combinations were used as input to time-synchronous averaging and autoregression model generation. The applied methodology shows promising results for early failure detection, and the process is feasible for implementation in an automated environment. Real time analysis is also possible since the autoregression model generates a healthy state TSA signal during the early testing stages. However, the time to failure detection varies with operating conditions, with low sensitivity at high-speed and low-torque conditions.
迈向实时自动早期齿轮故障检测
在灾难性失效之前停止齿轮疲劳试验的能力有许多优点。然而,目前还没有一种被广泛接受的方法。本案例研究应用基于振动的状态监测方法来检测早期齿轮故障。所研究的齿轮是全轮驱动传动系统的一部分。在两种恒转矩-转速组合下进行的4次运行至失效疲劳试验的振动信号作为输入,进行时间同步平均和自回归模型生成。应用的方法在早期故障检测方面显示出良好的结果,并且该过程在自动化环境中实现是可行的。实时分析也是可能的,因为自回归模型在早期测试阶段产生一个健康状态的TSA信号。然而,故障检测时间因运行条件而异,在高速和低扭矩条件下灵敏度较低。
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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来源期刊
Tribologia: Finnish Journal of Tribology
Tribologia: Finnish Journal of Tribology Materials Science-Surfaces, Coatings and Films
CiteScore
2.20
自引率
0.00%
发文量
4
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