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基于AWGAM-YOLOv8n的水冷壁积灰识别

Identification of water-cooled wall ash accumulation based on AWGAM-YOLOv8n.

作者信息

Hao Yongxing, Wang Bin, Hao Yilong, Cao Angang

机构信息

School of Mechanical Engineering, Zhengzhou University of Science and Technology, Zhengzhou, 450064, China.

School of Mechanical Engineering, North China University of Water Resources and Electric Power, Zhengzhou, 450045, China.

出版信息

Sci Rep. 2024 Oct 14;14(1):23950. doi: 10.1038/s41598-024-75121-w.

Abstract

Identifying the ash accumulation generated on the water-cooled walls of the waste incinerator is essential for the cleanup by the robotic arm. This paper improves a new algorithm based on YOLOv8n, which can identify the ash accumulation position on the water-cooled wall quickly and accurately. Firstly, the multi-scale fusion image enhancement algorithm is used to improve the sharpness and contrast of the image and enrich the details of the image. Secondly, the backbone feature extraction network of YOLOv8n is replaced by Mobilenetv3 network, which reduces the parameters in the model greatly. Finally, this paper improves a new attention mechanism AWGAM (Add Weight Global Attention Mechanism) based on GAM (Global Attention Mechanism), which can better integrate the feature information between different dimensions and improve the learning ability of the model. AWGAM is added to the backbone of the model. The experimental results show that compared with the original YOLOv8n model, the improved YOLOv8n model has 59.9% fewer parameters, 4.4% higher precision, 8.8% higher recall, 3.2% higher mAP50 (mean Average Precision) and 8.8% higher mAP50-95. This model has made remarkable progress on the basis of the original algorithm, and has strong competitiveness compared with other advanced target detection models. The lightweight and high accuracy of ash accumulation detection offered by the proposed model presents promising applications in ash accumulation detection tasks of water-cooled walls.

摘要

识别垃圾焚烧炉水冷壁上产生的积灰对于通过机械臂进行清理至关重要。本文改进了一种基于YOLOv8n的新算法,该算法能够快速、准确地识别水冷壁上的积灰位置。首先,采用多尺度融合图像增强算法提高图像的清晰度和对比度,丰富图像细节。其次,将YOLOv8n的骨干特征提取网络替换为Mobilenetv3网络,大大减少了模型中的参数。最后,本文改进了一种基于全局注意力机制(GAM)的新注意力机制AWGAM(加权重全局注意力机制),它能够更好地整合不同维度之间的特征信息,提高模型的学习能力。将AWGAM添加到模型的骨干中。实验结果表明,与原始的YOLOv8n模型相比,改进后的YOLOv8n模型参数减少了59.9%,精度提高了4.4%,召回率提高了8.8%,mAP50(平均精度均值)提高了3.2%,mAP50-95提高了8.8%。该模型在原算法的基础上取得了显著进展,与其他先进的目标检测模型相比具有很强的竞争力。所提出模型提供的积灰检测的轻量化和高精度在水冷壁积灰检测任务中具有广阔的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0d8f/11471751/392ea6e2db28/41598_2024_75121_Fig1_HTML.jpg

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