4.7 Article

A Distributed Observer for a Time-Invariant Linear System

Journal

IEEE TRANSACTIONS ON AUTOMATIC CONTROL
Volume 63, Issue 7, Pages 2123-2130

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAC.2017.2768668

Keywords

Distributed observer; time-invariant system; decentralized control

Funding

  1. National Science Foundation [1607101.00]
  2. US Air Force [FA9550-16-1-0290]
  3. ARO [W911NF-17-1-0499]

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A time-invariant, linear, distributed observer is described for estimating the state of an m > 0 channel, n-dimensional continuous-time linear system of the form (x) over dot = A(x), y(i) = C(i)x, i is an element of {1, 2,..., m}. The state x is simultaneously estimated by m agents assuming each agent i senses y(i) and receives the state z(j) of each of its neighbors' estimators. Neighbor relations are characterized by a constant directed graph N whose vertices correspond to agents and whose arcs depict neighbor relations. For the case when the neighbor graph is strongly connected, the overall distributed observer consists of m linear estimators, one for each agent; m - 1 of the estimators are of dimension n and one estimator is of dimension n + m - 1. Using results from the classical decentralized control theory, it is shown that subject to the assumptions that none of the C-i are zero, the neighbor graph N is strongly connected, the system whose state to be estimated is jointly observable, and nothing more, it is possible to freely assign the spectrum of the overall distributed observer. For the more general case, when N has q > 1 strongly connected components, it is explained how to construct a family of q distributed observers, one for each component, which can estimate x at a preassigned convergence rate.

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