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基于能量谱和深度学习的动力设备故障诊断方法。

Power Equipment Fault Diagnosis Method Based on Energy Spectrogram and Deep Learning.

机构信息

Key Laboratory of Networked Control Systems, Chinese Academy of Sciences, Shenyang 110016, China.

Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang 110016, China.

出版信息

Sensors (Basel). 2022 Sep 27;22(19):7330. doi: 10.3390/s22197330.

Abstract

With the development of industrial manufacturing intelligence, the role of rotating machinery in industrial production and life is more and more important. Aiming at the problems of the complex and changeable working environment of rolling bearings and limited computing ability, fault feature information cannot be effectively extracted, and the current deep learning model is difficult to be compatible with lightweight and high efficiency. Therefore, this paper proposes a fault detection method for power equipment based on an energy spectrum diagram and deep learning. Firstly, a novel two-dimensional time-frequency feature representation method and energy spectrum feature map based on wavelet packet transform is proposed, and an energy spectrum feature map dataset is made for subsequent diagnosis. This method can realize multi-resolution analysis, fully extract the feature information contained in the fault signal, and accelerate the convergence of the subsequent diagnosis model. Secondly, a lightweight residual dense convolutional neural network model (LR-DenseNet) is proposed. This model combines the advantages of residual learning and a dense connection, and can not only extract deep features more easily, but can also effectively use shallow features. Then, based on the lightweight residual dense convolutional neural network model, an LR-DenseSENet model is proposed. By introducing the transfer learning strategy and adding the channel domain, an attention mechanism is added to the channel feature fusion layer, with the accuracy of detection up to 99.4%, and the amount of parameter calculation greatly reduced to one-fifth of that of VGG. Finally, through an experimental analysis, it is verified that the fault detection model designed in this paper based on the combination of an energy spectrum feature map and LR-DenseSENet achieves a satisfactory detection effect.

摘要

随着工业制造智能化的发展,旋转机械在工业生产和生活中的作用越来越重要。针对滚动轴承工作环境复杂多变、计算能力有限的问题,故障特征信息无法有效提取,当前深度学习模型难以兼顾轻量化和高效率。为此,本文提出了一种基于能谱图和深度学习的电力设备故障检测方法。首先,提出了一种新颖的基于小波包变换的二维时频特征表示方法和能谱特征图,制作了能谱特征图数据集,以便后续进行诊断。该方法可以实现多分辨率分析,充分提取故障信号中的特征信息,加速后续诊断模型的收敛。其次,提出了一种轻量级残差密集卷积神经网络模型(LR-DenseNet)。该模型结合了残差学习和密集连接的优点,不仅可以更容易地提取深层特征,而且可以有效地利用浅层特征。然后,基于轻量级残差密集卷积神经网络模型,提出了 LR-DenseSENet 模型。通过引入迁移学习策略和增加通道域,在通道特征融合层中添加注意力机制,检测精度达到 99.4%,参数量计算大大减少到 VGG 的五分之一。最后,通过实验分析,验证了本文设计的基于能谱特征图和 LR-DenseSENet 组合的故障检测模型具有令人满意的检测效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2320/9571516/1900c1a316ba/sensors-22-07330-g001.jpg

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