Ji Hongxin, Han Peilin, Li Jiaqi, Liu Xinghua, Liu Liqing
School of Electrical Engineering, China University of Mining and Technology, Xuzhou 221116, China.
College of Mechanical and Electronic Engineering, Shandong Agricultural University, Tai'an 271018, China.
Sensors (Basel). 2024 Jul 2;24(13):4309. doi: 10.3390/s24134309.
It is difficult to visually detect internal defects in a large transformer with a metal closure. For convenient internal inspection, a micro-robot was adopted, and an inspection method based on an image-enhancement algorithm and an improved deep-learning network was proposed in this paper. Considering the dim environment inside the transformer and the problems of irregular imaging distance and fluctuating supplementary light conditions during image acquisition with the internal-inspection robot, an improved MSRCR algorithm for image enhancement was proposed. It could analyze the local contrast of the image and enhance the details on multiple scales. At the same time, a white-balance algorithm was introduced to enhance the contrast and brightness and solve the problems of overexposure and color distortion. To improve the target recognition performance of complex carbon-trace defects, the SimAM mechanism was incorporated into the Backbone network of the YOLOv8 model to enhance the extraction of carbon-trace features. Meanwhile, the DyHead dynamic detection Head framework was constructed at the output of the YOLOv8 model to improve the perception of local carbon traces with different sizes. To improve the defect target recognition speed of the transformer-inspection robot, a pruning operation was carried out on the YOLOv8 model to remove redundant parameters, realize model lightness, and improve detection efficiency. To verify the effectiveness of the improved algorithm, the detection model was trained and validated with the carbon-trace dataset. The results showed that the MSH-YOLOv8 algorithm achieved an accuracy of 91.80%, which was 3.4 percentage points higher compared to the original YOLOv8 algorithm, and had a significant advantage over other mainstream target-detection algorithms. Meanwhile, the FPS of the proposed algorithm was up to 99.2, indicating that the model computation and model complexity were successfully reduced, which meets the requirements for engineering applications of the transformer internal-inspection robot.
对于带有金属外壳的大型变压器,很难通过视觉检测其内部缺陷。为了便于进行内部检查,采用了微型机器人,并提出了一种基于图像增强算法和改进的深度学习网络的检测方法。考虑到变压器内部环境昏暗,以及使用内部检查机器人进行图像采集时成像距离不规则和辅助光条件波动的问题,提出了一种改进的用于图像增强的MSRCR算法。它可以分析图像的局部对比度,并在多尺度上增强细节。同时,引入了白平衡算法来增强对比度和亮度,并解决过曝光和颜色失真的问题。为了提高复杂碳迹缺陷的目标识别性能,将SimAM机制融入YOLOv8模型的骨干网络中,以增强碳迹特征的提取。同时,在YOLOv8模型的输出端构建了DyHead动态检测头框架,以提高对不同尺寸局部碳迹的感知能力。为了提高变压器检查机器人的缺陷目标识别速度,对YOLOv8模型进行了剪枝操作,去除冗余参数,实现模型轻量化,提高检测效率。为了验证改进算法的有效性,使用碳迹数据集对检测模型进行了训练和验证。结果表明,MSH - YOLOv8算法的准确率达到了91.80%,比原始的YOLOv8算法高出3.4个百分点,并且相对于其他主流目标检测算法具有显著优势。同时,所提算法的FPS高达99.2,表明成功降低了模型计算量和模型复杂度,满足变压器内部检查机器人工程应用的要求。