This paper addresses the classical problem of determining the set of possible states of a linear discrete-time SISO system subject to bounded disturbances, from measurements corrupted by bounded noise. These so-called uncertainty sets evolve with time as new measurements become available. We present two theorems which give a complete description of the relationship between uncertainty sets at two successive time instants, and this yields an efficient algorithm for recursively updating uncertainty sets. Numerical simulations demonstrate performance improvements over existing exact methods
The problem of estimating the state of discrete-time linear systems when uncertainties affect the sy...
The state estimation problem with observations which may or may not contain a signal at any sample t...
The unknown inputs in a dynamical system may represent unknown external drivers, input uncertainty, ...
In this paper, the problem of recursively estimating the state uncertainty set of a discrete-time li...
This paper presents a modified set theoretic framework for estimating the state of a linear dynamic ...
This paper presents a modified set theoretic framework for estimating the state of a linear dynamic ...
In this work we present a new algorithm for set-valued state propagation in observers with dynamic u...
This paper introduces methods of deriving and computing maximal robust positively invariant sets for...
This contribution proposes a recursive set-membership method for the ellipsoidal state characterizat...
This thesis deals with the robust control of nonlinear systems subject to persistent bounded non-add...
Propagation of uncertainty in the initial conditions of a dynamical system is necessary in various c...
International audienceThe problem considered is state estimation in the presence of unknow state and...
In most applications in control engineering a measurement of all state variables is either impossibl...
This note presents a new approach to guaranteed system identification for time-varying parameterized...
A numerically stable recursive set membership state estimation algorithm for linear discrete-time sy...
The problem of estimating the state of discrete-time linear systems when uncertainties affect the sy...
The state estimation problem with observations which may or may not contain a signal at any sample t...
The unknown inputs in a dynamical system may represent unknown external drivers, input uncertainty, ...
In this paper, the problem of recursively estimating the state uncertainty set of a discrete-time li...
This paper presents a modified set theoretic framework for estimating the state of a linear dynamic ...
This paper presents a modified set theoretic framework for estimating the state of a linear dynamic ...
In this work we present a new algorithm for set-valued state propagation in observers with dynamic u...
This paper introduces methods of deriving and computing maximal robust positively invariant sets for...
This contribution proposes a recursive set-membership method for the ellipsoidal state characterizat...
This thesis deals with the robust control of nonlinear systems subject to persistent bounded non-add...
Propagation of uncertainty in the initial conditions of a dynamical system is necessary in various c...
International audienceThe problem considered is state estimation in the presence of unknow state and...
In most applications in control engineering a measurement of all state variables is either impossibl...
This note presents a new approach to guaranteed system identification for time-varying parameterized...
A numerically stable recursive set membership state estimation algorithm for linear discrete-time sy...
The problem of estimating the state of discrete-time linear systems when uncertainties affect the sy...
The state estimation problem with observations which may or may not contain a signal at any sample t...
The unknown inputs in a dynamical system may represent unknown external drivers, input uncertainty, ...