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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Intelligent Diagnosis Method of Power Equipment Faults Based on Single-Stage Infrared Image Target Detection
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Intelligent Diagnosis Method of Power Equipment Faults Based on Single-Stage Infrared Image Target Detection

机译:基于单级红外图像目标检测的电力设备故障智能诊断方法

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摘要

With the rapid expansion of the scale of the power grid, the efficiency of fault diagnosis has been severely challenged by the large amount of inspection image data generated by intelligent devices such as drones and inspection robots. In order to improve the efficiency of fault diagnosis for power equipment in substations, a new method for intelligently diagnosing different types of faults in power equipment is proposed. For circuit breakers and insulators, YOLOv4 is selected as the target detection model. To improve the detection performance of the YOLOv4 model, this paper improves it: the Cross Stage Partial (CSP) structure is introduced in the Spatial Pyramid Pooling (SPP) module of the neck of the YOLOv4 model. The experimental results show that after using the optimal learning rate decay strategy, the mAP and frames per second (FPS) of the improved YOLOv4 model are better than the original YOLOv4 and PP-YOLO model. Finally, an intelligent diagnosis terminal system for power equipment faults is developed. Through the target recognition and rapid extraction of equipment temperature, the intelligent diagnosis of thermal faults of equipment is realized. This method is especially suitable for accurate fault diagnosis of more power equipment, and has potential huge applicability in the field of power equipment diagnosis.
机译:的规模迅速扩张的能力电网故障诊断的效率由大量的严重挑战检查图像数据生成的聪明无人机和检查机器人等设备。为了提高故障的效率诊断在变电站电力设备智能诊断的新方法不同类型的缺点提出了电力设备。断路器和绝缘体,YOLOv4选为目标检测模型。YOLOv4的提高检测的性能模型,本文改进了:十字架的阶段介绍了部分(CSP)结构空间金字塔池(SPP)模块的脖子YOLOv4模型。表明在使用最佳的学习速率衰减策略、地图和帧每秒(FPS)改善YOLOv4模型更好比原来的YOLOv4和PP-YOLO模型。最后,一个智能诊断终端系统对于电力设备的错误。目标识别和快速提取设备温度、智能诊断热故障的设备实现。方法特别适用于准确的错诊断为更多的电力设备,潜力巨大的领域的适用性电力设备诊断。

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