基于改进的快速区域卷积神经网络特征算法的变电站电气设备红外图像目标检测

Tao Xue, Changdong Wu
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引用次数: 0

摘要

变电站设备的故障会对整个国家的经济和电力消耗造成不可估量的损失。利用红外图像是获取设备温度的有力工具,然后可以在不停止设备运行的情况下直接用于变电站设备的诊断。本文主要研究如何从红外图像中正确识别不同类型的电气设备。提出了一种改进的基于卷积神经网络特征的更快区域(faster R-CNN)算法,该算法对变电站设备具有很高的检测精度。首先,对更快的R-CNN的主干进行优化。一个新的网络,ResNet-30网络,旨在减少ResNet-34网络的冗余,并在前几个阶段增加网络中剩余块的比例。然后,将网络的深层感受野与浅层感受野相结合,提出了一种具有大卷积核的双捷径结构。这提高了网络特征提取的能力。基于双捷径结构之间的通道数关系,在网络的通道过渡处提出了一种跨通道捷径。最后,将提出的方法与更快的r - cnn进行了比较,这些r - cnn的主干是ResNet-50+特征金字塔网络(ResNet-50+FPN)、v3+空间金字塔池(YOLOv3+SPP)和单次多盒检测器(SSD)。结果表明,改进后的模型不仅参数数量少,对图形处理单元(GPU)设备要求低,而且对测试集中大部分变电站设备具有最高的平均精度(mAP)。这为今后变电站设备的故障诊断奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Target Detection of Substation Electrical Equipment from Infrared Images Using an Improved Faster Regions with Convolutional Neural Network Features Algorithm
The failure of substation equipment can cause incalculable losses to the economy and power consumption of the whole country. The use of infrared images is a powerful tool to obtain equipment temperature, which can then be used directly to diagnose substation equipment without stopping the operation of the equipment. In this paper, the authors focus on the correct identification of different types of electrical equipment from the infrared images. An improved faster regions with convolutional neural network features (faster R-CNN) algorithm is proposed, which shows very high detection accuracy for substation equipment. Firstly, the backbone of the faster R-CNN is optimised. A new network, the ResNet-30 network, is designed to reduce the redundancy of the ResNet-34 network and increases the proportion of residual blocks in the network in the previous stages. Next, the deep receptive field is combined with the shallow receptive field of the network and a double-shortcut structure with a large convolutional kernel is proposed. This enhances the ability of network feature extraction. A cross-channel shortcut is proposed at the channel transition of the network based on the channel number relationship between the dual-shortcut structures. Finally, the proposed method is compared with faster R-CNNs whose backbones are ResNet-50 plus a feature pyramid network (ResNet-50+FPN), you only look once v3 plus spatial pyramid pooling (YOLOv3+SPP) and a single-shot multibox detector (SSD). The results show that the improved model not only has a smaller number of parameters and low requirements for graphics processing unit (GPU) equipment, but also has the highest mean average precision (mAP) for mostly substation equipment in the test-set. This lays a foundation for fault diagnosis of substation equipment in the future.
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