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A Deep Residual Convolutional Neural Network based Bearing Fault Diagnosis with Multi-Sensor Data

机译:基于剩余的卷积神经网络基于多传感器数据的轴承故障诊断

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Accurate bearing fault diagnosis is essential and significant for the safety and reliability of industrial rotating systems. To monitor the health condition of bearings in full scales, multi-sensors are always assembled in different locations of bearings. The data from different types or different locations of sensors have different sensitivity for fault diagnosis and localization, which makes feature extraction from multi-source data is critical for diagnosis. Deep learning based approaches have been widely used in bearing fault diagnosis, and have achieved significant successes. Deep residual convolutional neural network, as an improved structure of convolutional neural networks, has powerful learning ability when dealing with a deeper network. To improve the training efficiency and accuracy of diagnosis and make better use of bearing vibration data, this paper proposes a deep residual convolutional neural network based bearing fault diagnosis in which multisensor data are converted and combined into grayscale images for feature extraction and diagnosis. The proposed approach is verified using the data of tapered roller bearings, which are tested under different rotating speeds and loads. Experimental results and comparisons show that the proposed approach can achieve promising diagnosis accuracy with high efficiency.
机译:精确的轴承故障诊断对于工业旋转系统的安全性和可靠性至关重要,非常重要。要监控全尺度轴承的健康状况,多传感器始终在轴承的不同位置组装。来自不同类型或不同的传感器位置的数据对故障诊断和定位具有不同的灵敏度,这使得来自多源数据的特征提取对于诊断至关重要。基于深度学习的方法已被广泛用于轴承故障诊断,并取得了显着的成功。深度残余卷积神经网络,作为卷积神经网络的改进结构,在处理更深的网络时具有强大的学习能力。提高训练效率和诊断准确性并更好地利用轴承振动数据,提出了一种深度剩余卷积神经网络的基于轴承故障诊断,其中将多传感器数据转换并组合成灰度图像以进行特征提取和诊断。使用圆锥滚子轴承的数据验证所提出的方法,该数据在不同的旋转速度和负载下进行测试。实验结果和比较表明,该拟议方法可以高效地达到有前途的诊断精度。

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