基于改进YOLOv8的海上平台管道油液滴漏检测
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1.中海油研究总院有限责任公司 北京 100028; 2.中国石油大学(北京)机械与储运工程学院 北京 102249

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TP391.41;TN911.73

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海上无人平台智能化提升关键技术研究项目(KJZH-2024-2901)、地球深部探测与矿产资源勘查国家科技重大专项(2024ZD1000800,2024ZD1000806)资助


Detection of oil drop leakage in pipelines of offshore platforms based on improved YOLOv8
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1.China National Offshore Oil Corporation Research Institute Co., Ltd., Beijing 100028, China; 2.School of Mechanical and Storage and Transportation Engineering, China University of Petroleum (Beijing),Beijing 102249, China

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    摘要:

    针对海上平台管道油液滴漏检测中存在的尘雾干扰、目标尺度多变以及复杂背景等挑战,提出了一种基于改进YOLOv8模型的海上平台管道油液滴漏检测方法。首先,采用C2f_MP模块替换主干网络中的C2f模块,增强了细节特征提取能力。其次,通过在模型颈部引入高效多尺度注意力机制(EMA),提高了模型对复杂场景中多尺度目标的特征关注度,提升模型对于小目标的识别能力。最后,将原有检测头优化为4个轻量化小目标检测头,显著改善了小目标检测效果并采用WIoU损失函数增强训练效果,提升模型识别准确率。实验结果表明:改进YOLOv8模型在保持118 fps实时检测速度的同时,精确率较基线模型YOLOv8s提升2.3%,mAP@0.5提升2.4%。实际应用测试显示,改进模型在某海上平台管道油液滴漏检测中的平均准确率达到96.25%,满足工程应用需求,为复杂工业环境背景下的海上平台管道安全监测提供了有效的技术解决方案。

    Abstract:

    In response to the challenges encountered in the detection of oil leakage from pipelines on offshore platforms, such as dust and fog interference, varying target scales, and complex backgrounds, a detection method for oil leakage from offshore platform pipelines based on an improved YOLOv8 model is herein proposed.Initially, the C2f_MP module is employed to substitute the C2f module within the backbone network. This substitution effectively enhances the model′s capacity to extract detailed features. Subsequently, an efficient multi-scale attention mechanism (EMA) is incorporated into the model′s neck structure. This addition significantly improves the model′s focus on features of multi-scale targets within complex scenarios, thereby enhancing its ability to recognize small targets.Finally, the original detection head is optimized into four lightweight small target detection heads. This optimization remarkably improves the detection performance for small targets. Moreover, the WIoU loss function is utilized to boost the training effectiveness and enhance the model′s recognition accuracy.The experimental results indicate that the improved YOLOv8 model can maintain a real-time detection speed of 118 fps. Simultaneously, compared with the baseline model YOLOv8s, the precision is increased by 2.3%, and the mAP@0.5 is enhanced by 2.4%. The practical application tests demonstrate that the average accuracy of the improved model in detecting oil leakage from pipelines on a particular offshore platform reaches 96.25%. This achievement meets the requirements of engineering applications and offers an effective technical solution for the safety monitoring of offshore platform pipelines under complex industrial environment backgrounds.

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杨金丽,李伟,何骁勇,刘凯书,顾继俊.基于改进YOLOv8的海上平台管道油液滴漏检测[J].电子测量技术,2026,49(5):52-62

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  • 在线发布日期: 2026-05-08
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