In this article, we present our contribution to the ICPHM 2023 Data Challenge on Industrial Systems' Health Monitoring using Vibration Analysis. For the task of classifying sun gear faults in a gearbox, we propose a residual Convolutional Neural Network that operates on raw three-channel time-domain vibration signals. In conjunction with data augmentation and regularization techniques, the proposed model yields very good results in a multi-class classification scenario with real-world data despite its relatively small size, i.e., with less than 30,000 trainable parameters. Even when presented with data obtained from multiple operating conditions, the network is still capable to accurately predict the condition of the gearbox under inspection.
翻译:在本文中,我们提出了我们对振动分析使用工业系统健康监测ICPHM 2023数据挑战赛的贡献。针对齿轮箱中太阳齿轮故障的分类任务,我们提出了一个剩余卷积神经网络,该网络对原始的三通道时域振动信号进行操作。结合数据增强和正则化技术,所提出的模型在多类别分类场景中表现出非常好的结果,且实际数据集的参数少于30,000个。即使面对来自多个操作条件的数据,该网络仍能准确预测正在检查的齿轮箱的状态。