Fondazione Bruno Kessler, Via Sommarive 18, 38123 Trento, Italy.
Department of Mathematics, Informatics and Physical Sciences, University of Udine, Via delle Scienze 206, 33100 Udine, Italy.
Sensors (Basel). 2022 Jun 27;22(13):4859. doi: 10.3390/s22134859.
Power distribution grids are typically installed outdoors and are exposed to environmental conditions. When contamination accumulates in the structures of the network, there may be shutdowns caused by electrical arcs. To improve the reliability of the network, visual inspections of the electrical power system can be carried out; these inspections can be automated using computer vision techniques based on deep neural networks. Based on this need, this paper proposes the Semi-ProtoPNet deep learning model to classify defective structures in the power distribution networks. The Semi-ProtoPNet deep neural network does not perform convex optimization of its last dense layer to maintain the impact of the negative reasoning process on image classification. The negative reasoning process rejects the incorrect classes of an input image; for this reason, it is possible to carry out an analysis with a low number of images that have different backgrounds, which is one of the challenges of this type of analysis. Semi-ProtoPNet achieves an accuracy of 97.22%, being superior to VGG-13, VGG-16, VGG-19, ResNet-34, ResNet-50, ResNet-152, DenseNet-121, DenseNet-161, DenseNet-201, and also models of the same class such as ProtoPNet, NP-ProtoPNet, Gen-ProtoPNet, and Ps-ProtoPNet.
配电网络通常安装在户外,并且会暴露在环境条件下。当网络结构中积累了污染物时,可能会因电弧而导致停电。为了提高网络的可靠性,可以对电力系统进行目视检查;这些检查可以使用基于深度神经网络的计算机视觉技术自动执行。基于这一需求,本文提出了 Semi-ProtoPNet 深度学习模型,以对配电网络中的缺陷结构进行分类。Semi-ProtoPNet 深度神经网络不会对其最后一个密集层进行凸优化,以保持负推理过程对图像分类的影响。负推理过程拒绝输入图像的错误类别;因此,可以对具有不同背景的少量图像进行分析,这是此类分析的挑战之一。Semi-ProtoPNet 实现了 97.22%的准确率,优于 VGG-13、VGG-16、VGG-19、ResNet-34、ResNet-50、ResNet-152、DenseNet-121、DenseNet-161、DenseNet-201,以及 ProtoPNet、NP-ProtoPNet、Gen-ProtoPNet 和 Ps-ProtoPNet 等同类模型。