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Spectral identification of networks with inputs
[article]
2017
arXiv
pre-print
We consider a network of interconnected dynamical systems. Spectral network identification consists in recovering the eigenvalues of the network Laplacian from the measurements of a very limited number (possibly one) of signals. These eigenvalues allow to deduce some global properties of the network, such as bounds on the node degree. Having recently introduced this approach for autonomous networks of nonlinear systems, we extend it here to treat networked systems with external inputs on the
arXiv:1709.04153v1
fatcat:onfasqjdsbhltatc3wwx6eofwi