基于Hopfield神经网络的智能城市物联网无线和光网络故障定位

Bohui Wang, Hui Yang, Q. Yao, Ao Yu, Tao Hong, Jie Zhang, M. Kadoch, M. Cheriet
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引用次数: 5

摘要

随着全球智慧城市的快速发展,物联网和大数据分析的诱人服务促使人们设计更可靠的网络质量保障机制。当多个链路同时故障时,实时业务的传输就无法得到保证,这已经成为网络运行中的一个关键问题。因此,快速定位故障是网络快速恢复的前提。然而,随着无线、光纤网络规模的扩大和用户需求的不断增长,现有的故障定位方法已经不能满足需求。本文提出了一种基于Hopfield神经网络(HNN)的多链路故障定位算法。我们充分利用网络拓扑信息和传输的服务对故障集和告警集之间的关系进行建模。HNN作为一种优化方法,通过构造合适的能量函数来分析故障和报警的不确定性,并找出故障最可能发生的位置。实验证明,该方法在保证定位精度的同时,能够实现实时故障定位,为智慧城市服务保障提供了很好的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hopfield Neural Network-based Fault Location in Wireless and Optical Networks for Smart City IoT
With the rapid evolution of smart city all over the world, the appealing services of IoT and big data analytics have prompted the design of more reliable assurance mechanism for network quality. It has been a crucial issue of network operation that once multiple links fail simultaneously, the transmission of real-time services cannot be guaranteed. Therefore, rapid locating of faults is the premise for network to recover quickly. However, current faults location methods can’t satisfy the requirement due to the expansion scale of wireless and optical networks and the growing demands of customers. In this paper, we propose an efficient multi-link faults location algorithm based on Hopfield Neural Network (HNN). We make full use of the information of network topology and the services transmitted to model the relationship between fault set and alarm set. HNN is used as an optimization method to analyze the uncertainty of faults and alarms and to find where the faults most likely occur by constructing a proper energy function. It has been proved by experiments that this method can achieve real-time faults location while ensuring positioning accuracy, which provides a good solution for smart city service assurance.
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