Distributed Data-Driven Power Iteration for Strongly Connected Networks

Azwirman Gusrialdi, Z. Qu
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引用次数: 1

Abstract

This paper presents data-driven power iteration to distributively estimate the dominant eigenvalues of an unknown linear time-invariant system. The proposed strategy only requires a single trajectory data or measurements. Furthermore, in order to perform the distributed estimation, the communication network topology can be chosen to be any strongly connected directed graphs. The proposed data-driven power iteration is demonstrated using several numerical examples and is then applied to estimate the generalized algebraic connectivity of cooperative systems and to control the epidemic spreading.
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强连接网络的分布式数据驱动功率迭代
提出了一种数据驱动的幂次迭代方法来估计未知线性定常系统的显性特征值。所提出的策略只需要单个轨迹数据或测量。此外,为了进行分布式估计,通信网络拓扑可以选择为任意强连通有向图。通过几个数值算例验证了数据驱动的功率迭代方法,并将其应用于合作系统的广义代数连通性估计和流行病蔓延的控制。
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