GU Hui, SHAO Xing, WANG CuiXiang, et al. ROLLING BEARING FAULT DIAGNOSIS METHOD BASED ON CONVOLUTIONAL DEEP FOREST[J]. Journal of mechanical strength , 2024, 46(6): 1279-1286.
DOI:
GU Hui, SHAO Xing, WANG CuiXiang, et al. ROLLING BEARING FAULT DIAGNOSIS METHOD BASED ON CONVOLUTIONAL DEEP FOREST[J]. Journal of mechanical strength , 2024, 46(6): 1279-1286. DOI: 10.16579/j.issn.1001.9669.2024.06.002.
ROLLING BEARING FAULT DIAGNOSIS METHOD BASED ON CONVOLUTIONAL DEEP FOREST
摘要
针对滚动轴承振动信号非线性、样本量少、传统机器学习诊断算法需要专家经验等问题
提出了一种卷积深度森林(Convolutional Deep Forest
CDF)的故障诊断方法。首先对一维振动信号进行归一化和转图片预处理
接着利用卷积神经网络对图片训练
完成端到端的特征提取
然后使用级联森林对特征进行分析并分类
最后在轴承数据集上验证了CDF的有效性。试验结果表明
CDF针对4种负载下的大小样本数据均能取得较高的准确率
基于二维信号转图片的卷积神经网络和CDF的准确率均高于一维
证明了基于信号转图片数据预处理操作的有效性。
Abstract
Aiming at the vibration signal of rolling bearing with problems of nonlinear
small sample size and traditional machine learning based diagnosis algorithm required expert experience
a convolutional deep forest(CDF)based rolling bearing fault diagnosis algorithm was proposed.Firstly
the one-dimensional vibration signal was preprocessed through normalization and transformation into image.Then the convolution neural network was exploited to train the image to complete the end-to-end feature extraction
and the cascade forest was used to analyze and classify the features.Finally
the effectiveness of CDF was verified on the bearing data set.The experimental results show that CDF can achieve high accuracy for small or big sample data under four loads.In addition
the accuracy of convolution neural network and CDF based on two-dimensional image are higher than one-dimensional
which proves the effectiveness of data preprocessing operation based on signal to image.