Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning

J. Robotics Pub Date : 2022-04-14 DOI:10.1155/2022/9742815
Shan Rongrong, Ma Zhenyu, Ye Hong, Lin Zhenxing, Qiu Gongming, Ge Chengyu, L. Yang, Yu Kun
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引用次数: 2

Abstract

In view of the poor effect of most fault diagnosis methods on the intelligent recognition of equipment images, a fault diagnosis method of distribution equipment based on the hybrid model of robot and deep learning is proposed to reduce the dependence on manpower and realize efficient intelligent diagnosis. Firstly, the robot is used to collect the on-site state images of distribution equipment to build the image information database of distribution equipment. At the same time, the robot background is used as the comprehensive database data analysis platform to optimize the sample quality of the database. Then, the massive infrared images are segmented based on chroma saturation brightness space to distinguish the defective equipment images, and the defective equipment areas are extracted from the images by OTSU method. Finally, the residual network is used to improve the region-based fully convolutional networks (R-FCN) algorithm, and the improved R-FCN algorithm trained by the online hard example mining method is used for fault feature learning. The fault type, grade, and location of distribution equipment are obtained through fault criterion analysis. The experimental analysis of the proposed method based on PyTorch platform shows that the fault diagnosis time and accuracy are about 5.5 s and 92.06%, respectively, which are better than other comparison methods and provide a certain theoretical basis for the automatic diagnosis of power grid equipment.
基于机器人与深度学习混合模型的配电设备故障诊断方法
针对大多数故障诊断方法对设备图像的智能识别效果不佳的问题,提出了一种基于机器人与深度学习混合模型的配电设备故障诊断方法,以减少对人力的依赖,实现高效的智能诊断。首先,利用机器人采集配电设备的现场状态图像,建立配电设备的图像信息库;同时,利用机器人后台作为综合数据库数据分析平台,对数据库的样本质量进行优化。然后,基于色度饱和度亮度空间对海量红外图像进行分割,识别出缺陷设备图像,并采用OTSU方法提取出缺陷设备区域;最后,利用残差网络对基于区域的全卷积网络(R-FCN)算法进行改进,并利用在线硬例挖掘方法训练的改进R-FCN算法进行故障特征学习。通过故障判据分析,得到配电设备的故障类型、等级和位置。基于PyTorch平台的实验分析表明,该方法的故障诊断时间和准确率分别约为5.5 s和92.06%,优于其他比较方法,为电网设备的自动诊断提供了一定的理论依据。
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