Much recent research has dealt with the identifiability of a dynamical
network in which the node signals are connected by causal linear time-invariant
transfer functions and are possibly excited by known external excitation
signals and/or unknown noise signals. So far all results on the identifiability
of the whole network have assumed that all node signals are measured. Under
this assumption, it has been shown that such networks are identifiable only if
some prior knowledge is available about the structure of the network, in
particular the structure of the excitation. In this paper we present the first
results for the situation where not all node signals are measurable, under the
assumptions that the topology of the network is known, that each node is
excited by a known signal and that the nodes are noise-free. Using graph
theoretical properties, we show that the transfer functions that can be
identified depend essentially on the topology of the paths linking the
corresponding vertices to the measured nodes. An important outcome of our
research is that, under those assumptions, a network can often be identified
using only a small subset of node measurements.Comment: extended version of an article to appear at the 56th IEEE Conference
on Decision and Control, CDC 2017 8 pages, 2 style files, 3 pdf figures, 2
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