基于改进YOLOv5的输变电故障检测算法

Xinliang Tang, Xiaotong Ru, Jingfang Su, Gabriel Adonis
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引用次数: 0

摘要

在传输线上,风筝、塑料袋、气球等异物的侵入和电子元器件的损坏是传输线常见的故障。检测这些故障对电力系统的安全运行具有重要意义。为此,提出了一种基于深度卷积神经网络的YOLOv5目标检测方法。本文采用Mobilenetv2代替CSP -Darknet53作为骨干网络。该结构采用深度可分卷积,减少了计算量和参数;提高检出率。同时,为了补偿检测精度,在算法框架中融合了挤压激励网络(SENet)注意力模型,并增加了适用于小目标的新检测尺度,提高了故障目标区域在图像中的重要性。收集风筝、塑料袋、气球、输电线路绝缘子缺陷等异物图片,整理成数据集。在数据集上的实验结果表明,该算法的平均准确率精度(mAP)和召回率分别达到92.1%和92.4%。同时,通过对比,本文算法的检测精度高于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transmission and Transformation Fault Detection Algorithm Based on Improved YOLOv5
On the transmission line, the invasion of foreign objects such as kites, plastic bags, and balloons and the damage to electronic components are common transmission line faults. Detecting these faults is of great significance for the safe operation of power systems. Therefore, a YOLOv5 target detection method based on a deep convolution neural network is proposed. In this paper, Mobilenetv2 is used to replace Cross Stage Partial (CSP)-Darknet53 as the backbone. The structure uses depth-wise separable convolution toreduce the amount of calculation and parameters; improve the detection rate. At the same time, to compensate for the detection accuracy, the Squeeze-and-Excitation Networks (SENet) attention model is fused into the algorithm framework and a new detection scale suitable for small targets is added to improve the significance of the fault target area in the image. Collect pictures of foreign matters such as kites, plastic bags, balloons, and insulator defects of transmission lines, and sort them into a data set. The experimental results on datasets show that the mean Accuracy Precision (mAP) and recall rate of the algorithm can reach 92.1% and 92.4%, respectively. At the same time, by comparison, the detection accuracy of the proposed algorithm is higher than that of other methods.
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