基于FedGSC和RT-DETR的电力设备缺陷检测技术
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华东交通大学电气与自动化工程学院,江西 南昌 330013

作者简介:

韦宝泉(1979—),男,教授,博士,硕士生导师,研究方向为电气设备状态监测技术和智能网格技术。E-mail:48130131@qq.com。

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TM50;TP391

基金项目:

国家自然科学基金项目(52377103,52567009);江西省自然科学基金项目(2023BAB204064)


Research on Defect Detection Technology for Power Equipment Based on Efficient Federated Learning and RT-DETR
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School of Electrical and Automation Engineering, East China Jiaotong University, Nanchang 330013 , China

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    摘要:

    现有电力设备缺陷检测算法难以同时保证检测精度与速度,而且模型参数冗余、规模大,对部署在边缘端嵌入式设备中构成了挑战。提出一种基于联邦梯度评分修正(FedGSC)算法和实时端到端目标检测器(RT-DETR)的电力设备缺陷检测技术。首先,采用轻量化主干网络GhostNet替换RT-DETR的原有主干网络,利用通道剪枝对模型体积进一步压缩,大幅减少冗余参数,提高推理速度;构建基于云端服务器的联邦学习架构对边缘端轻量级RT-DETR模型进行分布式训练,为解决联邦学习训练过程中存在的非独立同分布(Non-IID)数据,引入FedGSC对每轮模型更新的梯度进行修正。实验结果显示,轻量级RT-DETR与传统RT-DETR以及YOLOv8相比较,算法模型大小仅47 MB,均值平均精度(mAP)为90.46%,能快速精准识别电力设备缺陷;提出的FedGSC算法在训练精度和收敛性上都明显优于联邦平均算法(FedAvg)和联邦公平平均算法(Fed-FV),并且FedGSC算法相较于FedAvg和FedFV算法分别节省40%和20%左右的通信成本。

    Abstract:

    Existing defect detection algorithms for power equipment are difficult to ensure both detection accuracy and speed, and the large scale of model parameter redundancy is a challenge for deployment in edge-side embedded devices. In this paper, we propose a power equipment defect detection technique based on federated gradient score correction(FedGSC) algorithm and real-time-detection Transformer(RT-DETR). First, the lightweight backbone network GhostNet is used to replace the original backbone network of the model in RT-DETR, and the model volume is further compressed using channel pruning, which significantly reduces the redundant parameters and improves the inference speed; on this basis, the federated learning architecture is introduced into the cloud server for the distributed training of the lightweight RT-DETR model at the edge end in order to solve the problem of non-independent homogeneous distribution(NID) in the federated learning training process. Non-independent and identically distributed(Non-IID) data exists, FedGSC is introduced to correct the gradient of each round of model update. Comparing the lightweight RT-DETR with traditional RT-DETR and YOLOv8, the algorithm model size is only 47 MB, and the mean average precision(mAP) is 90.46%, which can quickly and accurately identify the defects of power equipment; and the FedGSC algorithm reduces communication costs by approximately 40% and 20% compared to the FedAvg and FedFV algorithms, respectively.

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韦宝泉,刘龙平,邓芳明,等. 基于FedGSC和RT-DETR的电力设备缺陷检测技术[J]. 华东交通大学学报,2026, 43(2):104-114.

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  • 收稿日期:2024-12-24
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  • 在线发布日期: 2026-05-20
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