| 注册
首页|期刊导航|中国塑料|基于改进YOLO v8n的聚乙烯管道焊缝检测算法研究与应用

基于改进YOLO v8n的聚乙烯管道焊缝检测算法研究与应用

郄继春 王振超 徐璐 尤启江 张士军 陆剑峰

中国塑料2026,Vol.40Issue(3):48-55,8.
中国塑料2026,Vol.40Issue(3):48-55,8.DOI:10.19491/j.issn.1001-9278.2026.03.009

基于改进YOLO v8n的聚乙烯管道焊缝检测算法研究与应用

Study on enhanced YOLOv8n algorithm for detecting weld defects in polyethylene pipelines

郄继春 1王振超 2徐璐 3尤启江 3张士军 3陆剑峰4

作者信息

  • 1. 罗森博格(无锡)管道技术有限公司,江苏 无锡 214161||同济大学电子与信息工程学院,上海 201804
  • 2. 罗森博格(无锡)管道技术有限公司,江苏 无锡 214161||江南大学机械工程学院,江苏 无锡 214122
  • 3. 罗森博格(无锡)管道技术有限公司,江苏 无锡 214161
  • 4. 同济大学电子与信息工程学院,上海 201804
  • 折叠

摘要

Abstract

Detecting weld defects in polyethylene pipelines remains challenging due to low defect visibility,complex back-ground interference,and high variability in defect morphology as factors that traditionally necessitate extensive human ex-pertise.To address these limitations,this study presents FWD-YOLO,an improved object detection model based on YOLOv8n,specifically tailored for weld defect inspection.Key enhancements include:(1)replacing the standard Conv and C2f modules in the backbone with more efficient alternatives;(2)integrating the dynamic sampling module DySam-ple into the neck to improve robustness against geometric deformations and cluttered backgrounds;(3)introducing a multi-layer channel attention mechanism to facilitate effective multi-scale feature fusion;and(4)optimizing the loss func-tion to better balance precision and recall.Evaluated on a self-constructed dataset encompassing nine distinct defect cate-gories,FWD-YOLO achieves a 4.8%absolute improvement in mAP@50(reaching 73.3%),a 3%gain in recall,while simultaneously reducing model parameters by 22.4%and floating-point operations(FLOPs)by 42.6%com-pared to the original YOLOv8n.Furthermore,FWD-YOLO outperforms other lightweight YOLO variants,including YOLOv5n,YOLOv6n,YOLOv9t,YOLOv10n,YOLOv11n,and YOLOv12n,in terms of detection accuracy.These results demonstrate that FWD-YOLO offers an efficient,accurate,and deployable solution for automated quality inspection of polyethylene pipeline welds,thereby contributing to the safe and reliable operation of pipeline infrastructure.

关键词

聚乙烯对接焊缝/缺陷检测/图像识别/YOLO v8n/模型改进

Key words

polyethylene buttfusion joint/defect detection/image recognition/YOLO v8n/model improvement

分类

化学化工

引用本文复制引用

郄继春,王振超,徐璐,尤启江,张士军,陆剑峰..基于改进YOLO v8n的聚乙烯管道焊缝检测算法研究与应用[J].中国塑料,2026,40(3):48-55,8.

中国塑料

1001-9278

访问量0
|
下载量0
段落导航相关论文