机电设备虚拟样机建模与故障诊断技术

Xi-Lin Li Xi-Lin Li, Jie Yu Xi-Lin Li, Shi-Ming Zhao Jie Yu, Ya-Min Wang Shi-Ming Zhao, Hui-Hua Zhang Ya-Min Wang
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引用次数: 0

摘要

为了研究电机及电机传动系统的常见故障,本文以5kW电机系统为实验平台,建立虚拟样机模型。样机模型包括以下五个部分:电机单元、六自由度加载机构、变速箱、加载主轴、交流励磁变换器。然后,利用BP神经网络对虚拟样机中的典型故障进行识别。对振动变化、温度变化、电流扰动的最终识别时间不超过45秒,平均准确率超过99%。总体而言,该算法可以在较短的时间内准确诊断出典型故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Virtual Prototyping Modeling and Fault Diagnosis Technology for Mechanical and Electrical Equipment
In order to study common faults in motors and motor transmission systems, this article uses a 5kW motor system as an experimental platform to establish a virtual prototype model. The prototype model includes the following five parts: motor unit, 6-degree of freedom loading mechanism, transmission gearbox, loading spindle, and AC excitation converter. Then, the BP neural network is used to identify typical faults in the virtual prototype. The final recognition time for vibration changes, temperature changes, and current disturbances does not exceed 45 seconds, with an average accuracy rate of over 99%. Overall, the algorithm can accurately diagnose typical faults in a relatively short time.  
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