基于图卷积神经网络的光传输故障定位方法

IF 1.8 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Infrared, Millimeter, and Terahertz Waves Pub Date : 2023-04-12 DOI:10.1117/12.2663107
Yatao Wang, Yongli Zhao, Jia Liu, Yinji Jing
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引用次数: 0

摘要

随着光传输网络部署规模的不断扩大,故障定位作为保证光传输网络健康运行的重要功能,在光网络运维中显得越来越重要。然而,随着光传输网络规模的扩大和异构程度的加深,导致光传输网络在运维过程中产生了大量的故障数据。传统的故障定位技术缺乏对大量故障数据的有效处理,不能满足智能光传输网络的需要。近年来,神经网络算法不断发展,其中图神经网络在处理图结构数据方面表现得尤为出色。利用图卷积神经网络的推理能力,提出了一种基于图卷积神经网络的光传输网络故障定位算法。图卷积神经网络以光传输网络中的网络节点作为图卷积中的数据节点,以网络节点的故障数据作为特征向量,对每个节点相邻节点的特征信息进行聚合。通过迭代,每个节点不同程度地保存每个节点的特征信息,从而获得节点之间的局部结构特征和不同节点的故障特征。本文提出的算法在网络拓扑变化的情况下具有较强的鲁棒性,即在增加或删除网络节点时,算法仍然能够适应网络。仿真结果表明,该算法的故障定位准确率可达95%以上,故障定位速度快,定位时间约为几毫秒。
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A method of fault location based on graph convolution neural network in optical transport
As the deployment scale of optical transport networks continues to expand, fault location which is an important function of ensuring the healthy operation of optical transport networks, becomes more and more important in optical network operation and maintenance. However, the expansion of the scale of the optical transport network and the deepening of the degree of heterogeneity have resulted in a large amount of fault data during the operation and maintenance of the optical transport networks. The traditional fault location technology lacks effective processing of a large amount of fault data and cannot meet the needs of the intelligent optical transport networks. In recent years, neural network algorithms have continued to develop, among which graph neural networks are particularly brilliant in processing graph-structured data. Using the reasoning ability of graph neural network, this paper proposes a fault location algorithm for optical transport network based on graph convolutional neural network. Taking the network nodes in the optical transport network as the data nodes in the graph convolution, and the fault data of the network nodes as the feature vector, the graph convolutional neural network aggregates the feature information adjacent nodes for each node. Through iteration, each node saves the feature information of each node to different degrees, so as to obtain the local structural features between nodes and the fault features of different nodes. The algorithm proposed in this paper has strong robustness in the case of network topology changes, that is, the algorithm can still adapt to the network when adding or deleting network nodes. The simulation results show that the fault location accuracy rate of the proposed algorithm can reach more than 95%, and the fault can be quickly located, and the location duration is about several milliseconds.
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来源期刊
Journal of Infrared, Millimeter, and Terahertz Waves
Journal of Infrared, Millimeter, and Terahertz Waves 工程技术-工程:电子与电气
CiteScore
6.20
自引率
6.90%
发文量
51
审稿时长
3 months
期刊介绍: The Journal of Infrared, Millimeter, and Terahertz Waves offers a peer-reviewed platform for the rapid dissemination of original, high-quality research in the frequency window from 30 GHz to 30 THz. The topics covered include: sources, detectors, and other devices; systems, spectroscopy, sensing, interaction between electromagnetic waves and matter, applications, metrology, and communications. Purely numerical work, especially with commercial software packages, will be published only in very exceptional cases. The same applies to manuscripts describing only algorithms (e.g. pattern recognition algorithms). Manuscripts submitted to the Journal should discuss a significant advancement to the field of infrared, millimeter, and terahertz waves.
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