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基于卷积神经网络的齿轮箱复合故障诊断系统的开发。

Development of Compound Fault Diagnosis System for Gearbox Based on Convolutional Neural Network.

机构信息

Department of Mechanical Engineering, Chung Yuan Christian University, Taoyuan 32023, Taiwan.

Graduate Institute of Manufacturing Technology, National Taipei University of Technology, Taipei 10608, Taiwan.

出版信息

Sensors (Basel). 2020 Oct 29;20(21):6169. doi: 10.3390/s20216169.

Abstract

Gear transmission is widely used in mechanical equipment. In practice, if the gearbox is damaged, it not only affects the yield rate but also damages other parts of machines; thus, increases the cost and difficulty of maintenance. With the advancement of technology, the concept of unmanned factories has been proposed; an automatic diagnosis system for the health management of gearboxes becomes necessary. In this paper, a compound fault diagnosis system for the gearbox based on convolutional neural network (CNN) is developed. Specifically, three-axis vibration signals measured by accelerometers are used as the input of the one-dimensional CNN; the detection of the existence and type of the fault is directly output. In testing, the model achieved nearly 100% accuracy on the fault samples we captured. Experimental evidence also shows that the frequency-domain data can provide better diagnostic results than the time-domain data due to the stable characteristics in the frequency spectrum. For practical usage, we demonstrated a remote fault diagnosis system through a local area network on an embedded platform. Furthermore, optimization of convolution kernels was also investigated. When moderately reducing the number of convolution kernels, it does not affect the diagnostic accuracy but greatly reduces the training time of the model.

摘要

齿轮传动广泛应用于机械设备中。在实际应用中,如果齿轮箱损坏,不仅会影响产量,还会损坏机器的其他部件,从而增加维护的成本和难度。随着技术的进步,无人工厂的概念已经被提出,因此需要一种用于齿轮箱健康管理的自动诊断系统。在本文中,开发了一种基于卷积神经网络(CNN)的齿轮箱复合故障诊断系统。具体来说,使用加速度计测量的三轴振动信号作为一维 CNN 的输入,直接输出故障的存在和类型。在测试中,该模型对我们捕获的故障样本的准确率接近 100%。实验证据还表明,由于频谱中存在稳定的特征,频域数据比时域数据能提供更好的诊断结果。为了实际应用,我们在嵌入式平台上通过局域网展示了一个远程故障诊断系统。此外,还研究了卷积核的优化。适度减少卷积核的数量不会影响诊断精度,但会大大减少模型的训练时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/707b/7663062/1d9addabee98/sensors-20-06169-g001.jpg

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