Zhang Qikai, Yao Yunan, Huang Yage, Liu Yangbowen, Wu Linfeng
School of Naval and Power Engineering, Wuhan University of Technology, Wuhan 430070, China.
Sensors (Basel). 2025 Jan 26;25(3):752. doi: 10.3390/s25030752.
Bearings play a crucial role in the complex mechanical systems of ships, and their operational status is closely related to vibration signals. Therefore, analyzing bearing signals plays an important role in the field of fault diagnosis. In order to solve the problems of low accuracy and slow response speed in fault diagnosis through vibration signals at mixed speeds, this paper introduces an improved Simple Window Deep Convolutional Neural Network with Random Forest (SWDCNN-RF) model on traditional Wide Convolutional Neural Network (WDCNN). It was verified through the publicly available dataset of ball bearings from Western Reserve University in the United States. It was found that the improved model increased speed by 38.51% and accuracy from 97.5% to 99.6% at epoch = 50, and also achieved faster convergence and smaller fluctuations during training. This study is of great significance for determining the occurrence time and type of bearing faults, and provides criteria for reliability evaluation and fault diagnosis of equipment using bearings.
轴承在船舶复杂的机械系统中起着至关重要的作用,其运行状态与振动信号密切相关。因此,分析轴承信号在故障诊断领域具有重要意义。为了解决通过混合速度下的振动信号进行故障诊断时精度低和响应速度慢的问题,本文在传统的宽卷积神经网络(WDCNN)基础上引入了一种改进的带随机森林的简单窗口深度卷积神经网络(SWDCNN-RF)模型。通过美国凯斯西储大学公开的球轴承数据集进行了验证。结果发现,改进后的模型在epoch = 50时速度提高了38.51%,准确率从97.5%提高到了99.6%,并且在训练过程中实现了更快的收敛和更小的波动。本研究对于确定轴承故障的发生时间和类型具有重要意义,并为使用轴承的设备的可靠性评估和故障诊断提供了依据。