Topology reconstruction using time series data in telecommunication networks

IF 1.6 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Networks Pub Date : 2023-11-28 DOI:10.1002/net.22196
David Pisinger, Siv Sørensen
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Abstract

We consider Hybrid fiber-coaxial (HFC) networks in which data is transmitted from a root node to a set of customers using a series of splitters and coaxial cable lines that make up a tree. The physical locations of the components in a HFC network are always known but frequently the cabling is not. This makes cable faults difficult to locate and resolve. In this study we consider time series data received by customer modems to reconstruct the topology of HFC networks. We assume that the data can be translated into a series of events, and that two customers sharing many connections in the network will observe many similar events. This approach allows us to use maximum parsimony to minimize the total number of character-state changes in a tree based on observations in the leaf nodes. Furthermore, we assume that nodes located physically close to each other have a larger probability of being closely connected. Hence, our objective is a weighted sum of data distance and physical distance. A variable-neighborhood search heuristic is presented for minimizing the combined distance. Furthermore, three greedy heuristics are proposed for finding an initial solution. Computational results are reported for both real-life and synthetic network topologies using simulated customer data with various degrees of random background noise. We are able to reconstruct large topologies with a very high precision.
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基于时间序列数据的电信网拓扑重构
我们考虑混合光纤-同轴(HFC)网络,其中数据从根节点传输到一组客户,使用一系列分离器和同轴电缆线路组成树形。HFC网络中组件的物理位置总是已知的,但通常不知道布线。这使得电缆故障难以定位和解决。在本研究中,我们考虑客户调制解调器接收的时间序列数据来重建HFC网络的拓扑结构。我们假设数据可以转换为一系列事件,并且网络中共享许多连接的两个客户将观察到许多相似的事件。这种方法允许我们使用最大简约性来最小化基于叶节点观察的树中特征状态变化的总数。此外,我们假设物理上彼此靠近的节点具有更大的紧密连接概率。因此,我们的目标是数据距离和物理距离的加权和。为了最小化组合距离,提出了一种变邻域搜索启发式算法。在此基础上,提出了三种贪心启发式算法。使用具有不同程度随机背景噪声的模拟客户数据,报告了实际和合成网络拓扑的计算结果。我们能够以非常高的精度重建大型拓扑结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Networks
Networks 工程技术-计算机:硬件
CiteScore
4.40
自引率
9.50%
发文量
46
审稿时长
12 months
期刊介绍: Network problems are pervasive in our modern technological society, as witnessed by our reliance on physical networks that provide power, communication, and transportation. As well, a number of processes can be modeled using logical networks, as in the scheduling of interdependent tasks, the dating of archaeological artifacts, or the compilation of subroutines comprising a large computer program. Networks provide a common framework for posing and studying problems that often have wider applicability than their originating context. The goal of this journal is to provide a central forum for the distribution of timely information about network problems, their design and mathematical analysis, as well as efficient algorithms for carrying out optimization on networks. The nonstandard modeling of diverse processes using networks and network concepts is also of interest. Consequently, the disciplines that are useful in studying networks are varied, including applied mathematics, operations research, computer science, discrete mathematics, and economics. Networks publishes material on the analytic modeling of problems using networks, the mathematical analysis of network problems, the design of computationally efficient network algorithms, and innovative case studies of successful network applications. We do not typically publish works that fall in the realm of pure graph theory (without significant algorithmic and modeling contributions) or papers that deal with engineering aspects of network design. Since the audience for this journal is then necessarily broad, articles that impact multiple application areas or that creatively use new or existing methodologies are especially appropriate. We seek to publish original, well-written research papers that make a substantive contribution to the knowledge base. In addition, tutorial and survey articles are welcomed. All manuscripts are carefully refereed.
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