Wang Jianqiang, Sun Yiwei, Lin Ying, Zhang Ke
Department of Electronic and Communication Engineering, North China Electric Power University, Baoding 071003, China.
State Grid Shandong Electric Power Research Institute, Jinan 250003, China.
Sensors (Basel). 2024 Sep 12;24(18):5914. doi: 10.3390/s24185914.
Substation equipment defect detection has always played an important role in equipment operation and maintenance. However, the task scenarios of substation equipment defect detection are complex and different. Recent studies have revealed issues such as a significant missed detection rate for small-sized targets and diminished detection precision. At the same time, the current mainstream detection algorithms are highly complex, which is not conducive to deployment on resource-constrained devices. In view of the above problems, a small target and lightweight substation main scene equipment defect detection algorithm is proposed: Efficient Attentional Lightweight-YOLO (EAL-YOLO), which detection accuracy exceeds the current mainstream model, and the number of parameters and floating point operations (FLOPs) are also advantageous. Firstly, the EfficientFormerV2 is used to optimize the model backbone, and the Large Separable Kernel Attention (LSKA) mechanism has been incorporated into the Spatial Pyramid Pooling Fast (SPPF) to enhance the model's feature extraction capabilities; secondly, a small target neck network Attentional scale Sequence Fusion P2-Neck (ASF2-Neck) is proposed to enhance the model's ability to detect small target defects; finally, in order to facilitate deployment on resource-constrained devices, a lightweight shared convolution detection head module Lightweight Shared Convolutional Head (LSCHead) is proposed. Experiments show that compared with YOLOv8n, EAL-YOLO has improved its accuracy by 2.93 percentage points, and the mAP50 of 12 types of typical equipment defects has reached 92.26%. Concurrently, the quantity of FLOPs and parameters has diminished by 46.5% and 61.17% respectively, in comparison with YOLOv8s, meeting the needs of substation defect detection.
变电站设备缺陷检测在设备运行维护中一直发挥着重要作用。然而,变电站设备缺陷检测的任务场景复杂多样。近期研究发现了一些问题,如小尺寸目标的漏检率较高以及检测精度降低。同时,当前主流检测算法复杂度高,不利于在资源受限设备上部署。针对上述问题,提出了一种小目标且轻量级的变电站主场景设备缺陷检测算法:高效注意力轻量级YOLO(EAL-YOLO),其检测精度超过当前主流模型,参数数量和浮点运算量(FLOPs)也具有优势。首先,使用EfficientFormerV2优化模型主干,并将大分离核注意力(LSKA)机制融入空间金字塔池化快速(SPPF)中,以增强模型的特征提取能力;其次,提出了一种小目标颈部网络注意力尺度序列融合P2颈部(ASF2-Neck),以增强模型检测小目标缺陷的能力;最后,为便于在资源受限设备上部署,提出了一种轻量级共享卷积检测头模块轻量级共享卷积头(LSCHead)。实验表明,与YOLOv8n相比,EAL-YOLO的精度提高了2.93个百分点,12种典型设备缺陷的mAP50达到了92.26%。同时,与YOLOv8s相比,FLOPs数量和参数数量分别减少了46.5%和61.17%,满足了变电站缺陷检测的需求。