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Sensor Data-Driven Bearing Fault Diagnosis Based on Deep Convolutional Neural Networks and S-Transform

机译:基于深度卷积神经网络和S变换的传感器数据驱动轴承故障诊断

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摘要

Accurate and timely bearing fault diagnosis is crucial to decrease the probability of unexpected failures of rotating machinery and improve the efficiency of its scheduled maintenance. Since convolutional neural networks (CNN) have poor feature extraction capability for sensor data with 1D format, CNN combined with signal processing algorithm is often adopted for fault diagnosis. This increases manual conversion work and expertise dependence while reducing the feasibility and robustness of the corresponding fault diagnosis method. In this paper, a novel sensor data-driven fault diagnosis method is proposed by fusing S-transform (ST) algorithm and CNN, namely ST-CNN. First of all, a ST layer is designed based on S-transform algorithm. In the ST layer, sensor data is automatically converted into 2D time-frequency matrix without manual conversion work. Then, a new ST-CNN model is constructed, and the time-frequency coefficient matrixes are inputted into the constructed ST-CNN model. After the training process of the ST-CNN model is completed, the classification layer such as softmax performs the fault diagnosis. Finally, the diagnosis performance of the proposed method is evaluated by using two public available datasets of bearings. The experimental results show that the proposed method performs the higher and more robust diagnosis performance than other existing methods.
机译:准确及时的轴承故障诊断对于降低旋转机械意外故障的可能性以及提高其定期维护效率至关重要。由于卷积神经网络(CNN)对一维格式的传感器数据的特征提取能力较弱,因此通常采用结合信号处理算法的CNN进行故障诊断。这增加了手动转换工作和专业知识的依赖性,同时降低了相应故障诊断方法的可行性和鲁棒性。本文提出了一种融合S-变换(ST)算法和CNN的传感器数据驱动故障诊断新方法,即ST-CNN。首先,基于S变换算法设计了ST层。在ST层中,无需手动转换即可将传感器数据自动转换为2D时频矩阵。然后,构建新的ST-CNN模型,并将时频系数矩阵输入到所构建的ST-CNN模型中。 ST-CNN模型的训练过程完成后,分类层(例如softmax)将执行故障诊断。最后,通过使用两个公开的轴承数据集来评估所提出方法的诊断性能。实验结果表明,所提出的方法比其他现有方法具有更高,更强的诊断性能。

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