评估地理相关网络故障的影响

Sebastian Neumayer, G. Zussman, R. Cohen, E. Modiano
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引用次数: 60

摘要

通信网络容易受到自然灾害(如地震、洪水)和人为攻击(如电磁脉冲攻击)的影响。这样的现实世界事件具有地理位置,因此,网络图的地理结构会影响这些事件的影响。在本文中,我们着重于评估(地理)网络对此类灾害的脆弱性。特别是,我们的目标是确定将对网络容量产生最大影响的灾难的位置。我们考虑一个几何图模型,其中节点和链接在地理上位于一个平面上。具体来说,我们将物理网络建模为二部图(在拓扑和地理意义上),并考虑所有垂直线段切割的集合。对于该模型,我们开发了一个多项式时间算法来寻找最坏的可能切割。我们的方法有可能扩展到一般的图,并为网络设计提供了一个有希望的新方向,以避免地理灾难或攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the impact of geographically correlated network failures
Communication networks are vulnerable to natural disasters, such as earthquakes or floods, as well as to human attacks, such as an electromagnetic pulse (EMP) attack. Such real-world events have geographical locations, and therefore, the geographical structure of the network graph affects the impact of these events. In this paper we focus on assessing the vulnerability of (geographical) networks to such disasters. In particular, we aim to identify the location of a disaster that would have the maximum effect on network capacity. We consider a geometric graph model in which nodes and links are geographically located on a plane. Specifically, we model the physical network as a bipartite graph (in the topological and geographical sense) and consider the set of all vertical line segment cuts. For that model, we develop a polynomial time algorithm for finding a worst possible cut. Our approach has the potential to be extended to general graphs and provides a promising new direction for network design to avert geographical disasters or attacks.
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