N-YOLOv8:绝缘子缺陷自动检测模型
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N-YOLOv8 An Automatic Detection Model for Insulator Defects
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    摘要:

    目的 绝缘子正常工作是确保电力系统安全可靠运行的重要环节,为推动绝缘子缺陷的自动检测,设计出一 种绝缘子缺陷的轻量化检测模型 N -YOLOv8。 方法 在网络轻量化方面,首先融合深度可分离卷积、BN 层、 Hardswish 激活函数和残差连接设计轻量化模块 DPHConv,其次融合 Inception-Bottleneck 与 C2f 设计轻量化模块 CFI-X,它们以牺牲少量检测精度为代价,显著降低了网络的参数量。 在提升检测精度方面,基于 ECA 注意力机制 设计 T-ECA 模块后,将其融合多分支并行结构和 Gather Excite 注意力模块,设计注意力机制 PEG,其次结合 CIoU_ Loss 与 EIoU_Loss 的思想设计 CEIoU_Loss,最后引入 Soft-NMS 替换原网络的 NMS,它们有效提升了网络对绝缘子 缺陷的检测能力。 结果 相比 YOLOv8n 网络,N-YOLOv8 的参数量降低 43%,浮点运算量降低 37%,同时检测精度 高达 91. 7%,检测精度较原网络提升 0. 2%。 结论 N-YOLOv8 的检测效果较高,可以有效推动智能检测算法在无人 机设备上的部署,实现绝缘子缺陷的实时检测。

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    Objective The normal operation of insulators is a crucial part of ensuring the safe and reliable operation of power systems. To promote the automatic detection of insulator defects a lightweight detection model N-YOLOv8 was designed. Methods For network lightweighting a lightweight module called DPHConv was first designed by integrating depthwise separable convolution BN layer Hardswish activation function and residual connections. Second a lightweight module CFI-X was designed by integrating Inception-Bottleneck and C2f. These two modules significantly reduced the number of network parameters at the cost of only a minor loss in detection accuracy. In terms of improving detection accuracy a T-ECA module was designed based on the ECA attention mechanism. Then an attention mechanism PEG was designed by integrating the T-ECA module with a multi-branch parallel structure and a Gather Excite attention module. Furthermore CEIoU _ Loss was designed by combining the ideas of CIoU _ Loss and EIoU _ Loss. Finally Soft-NMS was introduced to replace the NMS in the original network. These improvements effectively boosted the network?? s performance in detecting insulator defects. Results Compared with the YOLOv8n network N-YOLOv8 reduced the number of parameters by 43% and floating-point operations by 37% while achieving a detection accuracy of 91. 7% which was 0. 2% higher than that of the original network. Conclusion N-YOLOv8 delivers high detection performance which can effectively facilitate the deployment of intelligent detection algorithms on UAV platforms and achieve real-time detection of insulator defects.

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宋鸿绅,贾晓芬. N-YOLOv8:绝缘子缺陷自动检测模型[J].重庆工商大学学报(自然科学版),2026,43(3):19-29
SONG Hongshen, JIA Xiaofen. N-YOLOv8 An Automatic Detection Model for Insulator Defects[J]. Journal of Chongqing Technology and Business University(Natural Science Edition),2026,43(3):19-29

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  • 在线发布日期: 2026-05-19
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