智能物联技术2024,Vol.56Issue(6) :47-50.

基于机械振动信号分析的轴承故障分类方法

Bearing Fault Classification Method Based on Mechanical Vibration Signal Analysis

王建国 张玄 陈跃 梁樱紫
智能物联技术2024,Vol.56Issue(6) :47-50.

基于机械振动信号分析的轴承故障分类方法

Bearing Fault Classification Method Based on Mechanical Vibration Signal Analysis

王建国 1张玄 2陈跃 3梁樱紫4
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作者信息

  • 1. 兖矿集团,山东 济宁 273500
  • 2. 山东产业技术研究院,济南 250000
  • 3. 山东产研博正创新咨询有限公司,济南 250000
  • 4. 济南圣泉集团股份有限公司,济南 250000
  • 折叠

摘要

提出一种基于机械振动信号分析的轴承故障分类方法.首先,通过对机械振动信号进行短时傅里叶变换(Short-Time Fourier Transform,STFT),提取时频域特征向量;其次,利用自注意力机制增强的多层感知机(Multi-Layer Perceptron,MLP)模型进行轴承故障分类,该模型能够有效捕捉特征间的依赖关系,从而提高分类精度;最后,采用PRONOSTIA轴承数据集进行模型训练和测试.实验结果表明,该方法在正常状态和磨损故障的识别上具有出色的表现,尽管裂纹故障的检测精度略逊一筹,但总体准确率仍达到 0.93.

Abstract

This paper presents a bearing fault classification method based on mechanical vibration signal analysis.Firstly,the feature vector in time-frequency domain is extracted by Short-Time Fourier Transform(STFT)on the mechanical vibration signal.Secondly,the Multi-Layer Perceptron(MLP)model enhanced by self-attention mechanism is used to classify bearing faults,which can effectively capture the dependency between features to improve the classification accuracy.Finally,PRONOSTIA bearing data set was used for model training and testing.The experimental results show that this method has excellent performance in the identification of normal state and wear faults.Although the detection accuracy of crack faults is slightly lower,the overall accuracy is still 0.93.

关键词

机械信号/故障分类/短时傅里叶变换(STFT)/自注意力机制/多层感知机(MLP)

Key words

mechanical signal/fault classification/Short-Time Fourier Transform(STFT)/self-attention mechanism/Multi-Layer Perceptron(MLP)

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出版年

2024
智能物联技术
中国电子科技集团公司第52研究所

智能物联技术

ISSN:2096-6059
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