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基于伺服电机电流信号和优化的Fisher判别分析的行星齿轮减速器齿侧间隙识别

A planetary gear reducer backlash identification based on servo motor current signal and optimized fisher discriminant analysis.

作者信息

Yang Qichao, Liu Tao, Wu Xing, Deng Yunnan, Chen Qing

机构信息

Key Laboratory of Advanced Equipment Intelligent Manufacturing Technology of Yunnan Province, Kunming University of Science and Technology, No.727 South Jingming Rd., Chenggong District, Kunming, China, Zip code: 650500.

出版信息

ISA Trans. 2021 Jun;112:350-362. doi: 10.1016/j.isatra.2020.12.016. Epub 2020 Dec 16.

Abstract

Planetary gear reducer is widely used in industrial automation, and its performance highly affects the equipment reliability. The backlash and stiffness may cause the performance decline of planetary, hence the vibration, temperature, current and other signals are applied in planetary condition monitoring. The purpose of this paper is to develop a practical and effective method based on motor current signal analysis (MCSA) to identify backlash faults of planetary gear reducers. The sensitivity weight ratio (SWR) is proposed to optimize the introduced fisher discriminant analysis (FDA) algorithm, which is used to extract and screen the current signal characteristics of the servo motor. The motor is connected to the reducer, so the changes in the operating conditions of the planetary gears can be observed in the motor current. Compared with the traditional detection method of equipment health status, the Hall current sensor is a non-invasive method with lower cost and easy installation. Besides, the support vector machine (SVM) classifier and some published methods are utilized to classify the backlash of the planetary gear. Finally, experimental tests were carried out under different backlashes and loads to verify the effectiveness of the method.

摘要

行星齿轮减速器在工业自动化中应用广泛,其性能对设备可靠性有很大影响。齿侧间隙和刚度可能导致行星齿轮性能下降,因此振动、温度、电流等信号被应用于行星齿轮状态监测。本文的目的是开发一种基于电机电流信号分析(MCSA)的实用有效的方法,以识别行星齿轮减速器的齿侧间隙故障。提出了灵敏度权重比(SWR)来优化引入的Fisher判别分析(FDA)算法,该算法用于提取和筛选伺服电机的电流信号特征。电机与减速器相连,因此可以在电机电流中观察到行星齿轮运行状态的变化。与传统的设备健康状态检测方法相比,霍尔电流传感器是一种非侵入性方法,成本较低且易于安装。此外,利用支持向量机(SVM)分类器和一些已发表的方法对行星齿轮的齿侧间隙进行分类。最后,在不同的齿侧间隙和负载条件下进行了实验测试,以验证该方法的有效性。

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