论文标题
故障网:用于轴承故障分类的深卷卷神经网络
FaultNet: A Deep Convolutional Neural Network for bearing fault classification
论文作者
论文摘要
高级传感器在生产地板上的存在增加导致了数据集的收集,这些数据集可以为机器健康提供重要的见解。机器健康的重要指标,振动信号数据可以使我们对机械系统中发生的不同故障有更深入的了解。在这项工作中,我们通过结合不同的信号处理方法并将它们与机器学习技术耦合以对不同类型的轴承断层进行分类,从而分析了机械系统的振动信号数据。我们还强调了使用不同信号处理方法并分析其对轴承故障检测准确性的影响的重要性。除了传统的机器学习算法外,我们还提出了一个卷积神经网络故障网络,该网络可以有效地确定轴承断层的类型,并具有高度的准确性。这项工作的区别因素是提议从信号中提取更多信息的通道的想法,我们将平均值和中位通道堆叠到原始信号,以提取更有用的功能,以更高的精度对信号进行分类。
The increased presence of advanced sensors on the production floors has led to the collection of datasets that can provide significant insights into machine health. An important and reliable indicator of machine health, vibration signal data can provide us a greater understanding of different faults occurring in mechanical systems. In this work, we analyze vibration signal data of mechanical systems with bearings by combining different signal processing methods and coupling them with machine learning techniques to classify different types of bearing faults. We also highlight the importance of using different signal processing methods and analyze their effect on accuracy for bearing fault detection. Apart from the traditional machine learning algorithms we also propose a convolutional neural network FaultNet which can effectively determine the type of bearing fault with a high degree of accuracy. The distinguishing factor of this work is the idea of channels proposed to extract more information from the signal, we have stacked the Mean and Median channels to raw signal to extract more useful features to classify the signals with greater accuracy.