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基于宽三轴向振动信号输入的深度卷积神经网络的旋转机械故障诊断。

Fault Diagnosis of Rotary Machines Using Deep Convolutional Neural Network with Wide Three Axis Vibration Signal Input.

机构信息

Faculty of Mechanical Engineering and Naval Architecture, University of Zagreb, Ivana Lučića Street 5, 10002 Zagreb, Croatia.

Department of Thermal Technology, University of Technology and Humanities in Radom, Stasieckiego Street 54, 26600 Radom, Poland.

出版信息

Sensors (Basel). 2020 Jul 19;20(14):4017. doi: 10.3390/s20144017.

Abstract

Fault diagnosis is considered as an essential task in rotary machinery as possibility of an early detection and diagnosis of the faulty condition can save both time and money. This work presents developed and novel technique for deep-learning-based data-driven fault diagnosis for rotary machinery. The proposed technique input raw three axes accelerometer signal as high definition 1D image into deep learning layers which automatically extract signal features, enabling high classification accuracy. Unlike the researches carried out by other researchers, accelerometer data matrix with dimensions 6400 × 1 × 3 is used as input for convolutional neural network training. Since convolutional neural networks can recognize patterns across input matrix, it is expected that wide input matrix containing vibration data should yield good classification performance. Using convolutional neural networks (CNN) trained model, classification in one of the four classes can be performed. Additionally, number of kernels of CNN is optimized using grid search, as preliminary studies show that alternating number of kernels impacts classification results. This study accomplished the effective classification of different rotary machinery states using convolutional artificial neural network for classification of raw three axis accelerometer signal input.

摘要

故障诊断被认为是旋转机械中的一项重要任务,因为早期检测和诊断故障状态可以节省时间和金钱。这项工作提出了一种基于深度学习的数据驱动的旋转机械故障诊断的新技术。所提出的技术将原始的三轴加速度计信号作为高清晰度的 1D 图像输入到深度学习层中,自动提取信号特征,实现高精度的分类。与其他研究人员进行的研究不同,加速度计数据矩阵的维度为 6400×1×3 被用作卷积神经网络训练的输入。由于卷积神经网络可以识别输入矩阵中的模式,因此预计包含振动数据的宽输入矩阵应该会产生良好的分类性能。使用经过卷积神经网络 (CNN) 训练的模型,可以对四个类别中的一个进行分类。此外,使用网格搜索优化了 CNN 的核数,因为初步研究表明,核数的交替会影响分类结果。这项研究使用卷积人工神经网络对原始三轴加速度计信号输入进行分类,实现了不同旋转机械状态的有效分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a776/7411931/f91956154f5b/sensors-20-04017-g001.jpg

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