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Multi-scale CNN for Multi-sensor Feature Fusion in Helical Gear Fault Detection

机译:用于多传感器特征融合的多尺度CNN在螺旋齿轮故障检测中

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Fault detection and diagnosis of helical gears under high speed and heavy load conditions are rarely researched comparing with spur gears under light load and low speed conditions. It is a fact that the working conditions of helical gears are very complicated, thus multiple sensors mounted on its different locations can provide complementary information on fault detection and diagnosis. On this basis, a multi-scale multi-sensor feature fusion convolutional neural network (MSMFCNN) is derived, and it operates information fusion on both data level and feature level. MSMFCNN contains three parts, including a conventional one-dimensional CNN part, a multi-scale multi-sensor feature fusion part, and an output part. To better understand this network, theoretical foundation of MSMFCNN is given. Moreover, in order to demonstrate effectiveness of the proposed method, experiments are carried out on a parallel shaft gearbox test rig on which multiple acceleration sensors are mounted for data acquisition. The experimental results show that MSMFCNN can fully utilize multi-sensor information and get a high accuracy on helical gear fault detection and can also converge faster than standard CNN.
机译:在轻度负荷和低速条件下,很少研究高速和重载条件下螺旋齿轮的故障检测和诊断。事实上,螺旋齿轮的工作条件非常复杂,因此安装在其不同位置的多个传感器可以提供有关故障检测和诊断的互补信息。在此基础上,导出多尺度多传感器特征融合卷积神经网络(MSMFCNN),并在数据级别和特征级别操作信息融合。 MSMFCNN包含三个部分,包括传统的一维CNN部件,多尺度多传感器特征融合部分和输出部分。为了更好地了解这个网络,给出了MSMFCNN的理论基础。此外,为了证明所提出的方法的有效性,在平行的轴齿轮箱试验台上进行实验,该试验机上安装了多个加速度传感器以进行数据采集。实验结果表明,MSMFCNN可以充分利用多传感器信息,并在螺旋齿轮故障检测获得高精度,并且还可以比标准CNN更快地收敛。

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