In this paper we prove the following new and unexpected result: it is possible
to design a continuous-time distributed filter for linear systems that asymptotically tends at
each node to the optimal centralized filter. The result concerns distributed estimation over a
connected undirected graph and it only requires to exchange the estimates among adjacent
nodes. We exhibit an algorithm containing a consensus term with a parametrized gain and show
that when the parameter becomes arbitrarily large the error covariance at each node becomes
arbitrarily close to the error covariance of the optimal centralized Kalman filter.
Dettaglio pubblicazione
2020, 21th World Congress of the International-Federation-of-Automatic-Control (IFAC), Pages -
Asymptotically Optimal Distributed Filtering of Continuous-Time Linear Systems (04b Atto di convegno in volume)
Battilotti S., Cacace F., d'Angelo M., Germani A.
Gruppo di ricerca: Nonlinear Systems and Control