Research on Fault Diagnosis Method of Rolling Bearing Based on Improved Convolutional Neural Network

Xiaolong Liu, Xiaojun Xia, Jiaqiang Song
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Abstract

When a rolling bearing fails, the vibration signal of the bearing is unstable and the signal presents non-linear characteristics. As a result, the existing rolling bearing fault diagnosis system has a weak ability to extract the original signal, and the poor ability to identify the rolling bearing signal leads to the final diagnosis effect and expected performance. There is a big gap, in order to enhance the intelligence of the fault diagnosis system, improve the accuracy and generalization ability of the system, and adapt to the needs of factory big data fault diagnosis. This paper proposes a fault diagnosis method of rolling bearing based on improved convolution neural network. First, this method improves the existing activation function and pooling method. After the convolutional layer and pooling, a layer of convolutional layer is added, and the stochastic gradient descent algorithm is used to accelerate the training speed. At the same time, an improved uniformity is proposed. The variance is used as the loss function of the network. The method proposed in this paper is experimentally verified under the bearing data set of Case Western Reserve University, the classic rolling bearing data set, and the conclusion is drawn through the experiment: the experiment under the bearing data set of Case Western Reserve University of the classic rolling bearing data set has achieved better results than the traditional The model has better experimental results, good anti-dryness and better generalization ability. This diagnosis method provides a new idea for fault diagnosis methods, and has a good technical application prospect in industrial production.
基于改进卷积神经网络的滚动轴承故障诊断方法研究
当滚动轴承发生故障时,轴承的振动信号不稳定,信号呈现非线性特征。因此,现有的滚动轴承故障诊断系统对原始信号的提取能力较弱,对滚动轴承信号的识别能力较差,导致了最终的诊断效果和预期的性能。存在较大差距,以增强故障诊断系统的智能化,提高系统的准确性和泛化能力,适应工厂大数据故障诊断的需求。提出了一种基于改进卷积神经网络的滚动轴承故障诊断方法。首先,该方法改进了现有的激活函数和池化方法。在卷积层和池化之后,再增加一层卷积层,并采用随机梯度下降算法加快训练速度。同时,提出了一种改进的均匀性。用方差作为网络的损失函数。本文提出的方法在Case西储大学轴承数据集经典滚动轴承数据集下进行了实验验证,并通过实验得出结论:在Case西储大学轴承数据集经典滚动轴承数据集下的实验取得了比传统模型更好的效果,模型具有更好的实验效果、良好的抗干性和更好的泛化能力。该诊断方法为故障诊断方法提供了一种新的思路,在工业生产中具有良好的技术应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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