基于电机电流特征分析的转动副摩擦状态识别研究

IF 1 4区 工程技术 Q4 ENGINEERING, MECHANICAL
Naiming Jiang, Guofu Li
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引用次数: 1

摘要

对转动副摩擦状态的识别有助于对其工作状态的监测。提出了一种基于电机电流特征分析的旋转副摩擦状态识别新方法。通过变分模态分解对电流信号进行分解,提取出电流信号的多维特征。采用集成学习方法对支持向量机进行训练,构建组合分类器。多种分类器以不同的分类间隔识别出转动副的摩擦特征信号后,可以准确评估转动副此时的摩擦状态,初步估计出发生干摩擦前的时间。结果表明,通过分析驱动转动副的电机定子电流特征,提取多域、多维摩擦特征,可以完整地反映转动副摩擦状态的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study of recognising the friction state of revolute pairs based on the motor current signature analysis
The recognition of the friction state of revolute pairs can help with the monitoring of their operating conditions. A new method for recognising the friction state of revolute pairs based on motor current signature analysis was proposed in this paper. Current signals were decomposed and multidimensional features were extracted by variational mode decomposition. The support vector machine was trained by ensemble learning, and a combined classifier was built. The friction state of revolute pairs at this moment could be evaluated precisely after their friction feature signal was recognised by multiple types of classifiers with different classification intervals, and the time before dry friction could be preliminarily estimated. The results indicate that, the change of the friction state of revolute pairs could be represented completely by analysing the stator current features of the motor driving the revolute pairs and extracting the multi-domain and multi-dimensional friction features.
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来源期刊
CiteScore
1.60
自引率
25.00%
发文量
21
审稿时长
>12 weeks
期刊介绍: IJSurfSE publishes refereed quality papers in the broad field of surface science and engineering including tribology, but with a special emphasis on the research and development in friction, wear, coatings and surface modification processes such as surface treatment, cladding, machining, polishing and grinding, across multiple scales from nanoscopic to macroscopic dimensions. High-integrity and high-performance surfaces of components have become a central research area in the professional community whose aim is to develop highly reliable ultra-precision devices.
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