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首页> 外文期刊>Control of Network Systems, IEEE Transactions on >Consensus and Coherence in Fractal Networks
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Consensus and Coherence in Fractal Networks

机译:分形网络的共识与连贯

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摘要

We consider first- and second-order consensus algorithms in networks with stochastic disturbances. We quantify the deviation from consensus using the notion of network coherence, which can be expressed as an norm of the stochastic system. We use the setting of fractal networks to investigate the question of whether a purely topological measure, such as the fractal dimension, can capture the asymptotics of coherence in the large system size limit. Our analysis for first-order systems is facilitated by connections between first-order stochastic consensus and the global mean first passage time of random walks. We then show how to apply similar techniques to analyze second-order stochastic consensus systems. Our analysis reveals that two networks with the same fractal dimension can exhibit different asymptotic scalings for network coherence. Thus, this topological characterization of the network does not uniquely determine coherence behavior. The question of whether the performance of stochastic consensus algorithms in large networks can be captured by purely topological measures, such as the spatial dimension, remains open.
机译:我们考虑具有随机干扰的网络中的一阶和二阶共识算法。我们使用网络一致性的概念来量化与共识的偏差,可以将其表示为随机系统的范数。我们使用分形网络的设置来研究一个纯粹的拓扑度量(例如分形维数)是否可以在较大的系统大小限制内捕获相干的渐近性的问题。我们对一阶系统的分析得益于一阶随机共识与随机游走的全球平均首次通过时间之间的联系。然后,我们展示了如何应用类似的技术来分析二阶随机共识系统。我们的分析表明,具有相同分形维数的两个网络可以表现出不同的渐近标度,以实现网络相干性。因此,网络的这种拓扑特征不能唯一地确定相干行为。关于大型网络中的随机共识算法的性能是否可以通过诸如空间维度之类的纯拓扑度量来捕获的问题仍然存在。

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