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Robustness of interdependent random geometric networks

机译:相互依赖的随机几何网络的鲁棒性

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We propose an interdependent random geometric graph (RGG) model for interdependent networks. Based on this model, we study the robustness of two interdependent spatially embedded networks where interdependence exists between geographically nearby nodes in the two networks. We study the emergence of the giant mutual component in two interdependent RGGs as node densities increase, and define the percolation threshold as a pair of node densities above which the mutual giant component first appears. In contrast to the case for a single RGG, where the percolation threshold is a unique scalar for a given connection distance, for two interdependent RGGs, multiple pairs of percolation thresholds may exist, given that a smaller node density in one RGG may increase the minimum node density in the other RGG in order for a giant mutual component to exist. We derive analytical upper bounds on the percolation thresholds of two interdependent RGGs by discretization, and obtain 99% confidence intervals for the percolation thresholds by simulation. Based on these results, we derive conditions for the interdependent RGGs to be robust under random failures and geographical attacks.
机译:我们为相互依赖的网络提出了相互依赖的随机几何图(RGG)模型。基于此模型,我们研究了两个相互依存的空间嵌入式网络的鲁棒性,其中两个网络中在地理位置上相邻的节点之间存在相互依存关系。我们研究了两个相互依赖的RGG中随着节点密度增加而出现的巨互分量,并将渗流阈值定义为一对节点密度,在此之上,互巨分量首先出现。与单个RGG的情况相反,对于每个给定的连接距离,渗滤阈值是唯一的标量,对于两个相互依赖的RGG,可能存在多对渗滤阈值,因为一个RGG中较小的节点密度可能会增加最小另一个RGG中的节点密度,以便存在巨大的互斥分量。我们通过离散化得出两个相互依赖的RGG的渗滤阈值的解析上限,并通过仿真获得渗滤阈值的99%置信区间。基于这些结果,我们得出了在随机故障和地理攻击下相互依赖的RGG鲁棒的条件。

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