Network Identification: A Passivity and Network Optimization Approach
Abstract
The theory of network identification, namely identifying the interaction topology among a known number of agents, has been widely developed for linear agents over recent years. However, the theory for nonlinear agents remains less extensive. We use the notion maximal equilibrium-independent passivity (MEIP) and network optimization theory to present a network identification method for nonlinear agents.We do so by introducing a specially designed exogenous input, and exploiting the properties of networked MEIP systems. We then specialize on LTI agents, showing that the method gives a distributed cubic-time algorithm for network reconstruction in that case. We also discuss different methods of choosing the exogenous input, and provide an example on a neural network model.
Cite
@article{arxiv.1807.06841,
title = {Network Identification: A Passivity and Network Optimization Approach},
author = {Miel Sharf and Daniel Zelazo},
journal= {arXiv preprint arXiv:1807.06841},
year = {2019}
}
Comments
8 Pages, 3 Figures