基于单片机和人工智能的电机故障诊断系统

Meng Hao, Xin Wang, Peiyu Li, Fan He, Liu Yang, Meng Xiao, X. Bian, Zixuan Zhang
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引用次数: 0

摘要

设计了一种基于STM32单片机和深度学习的人工智能电机故障诊断系统。经过算法优化和少量样本学习,故障诊断的实时识别率可达96.07%。首先,设计硬件电路,采用ADXL335加速度传感器采集电机运行振动信号,并采用卡尔曼滤波提高采样精度。然后将卡尔曼滤波后的信号通过串口输出到上位机,再通过FFT转换成深度学习模型进行训练和识别。最后,在自制的电机故障诊断仿真实验平台上进行了实验,结果表明该系统具有较好的识别效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motor Fault Diagnosis System Based on Single Chip Microcomputer and Artificial Intelligence
An artificial intelligence motor fault diagnosis system based on STM32 single-chip microcomputer and deep learning is designed. After algorithm optimization and a small number of sample learning, the real-time recognition rate of fault diagnosis can reach 96.07%. First, the hardware circuit is designed, the ADXL335 acceleration sensor is used to collect the motor running vibration signal, and the Kalman filter is used to improve the sampling accuracy. Then the Kalman filtered signal is output to the host computer through the serial port, and then converted into the deep learning model for training and recognition using FFT. Finally, experiments are carried out on a self-made motor fault diagnosis simulation experiment platform, and the results show that the system has a better recognition effect.
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