This paper presents a direct data-driven approach for computing robust control invariant (RCI) sets and their associated state-feedback control laws. The proposed method utilizes a single state-input trajectory generated from the system, to compute a polytopic RCI set with a desired complexity and an invariance-inducing feedback controller, without the need to identify a model of the system. The problem is formulated in terms of a set of sufficient LMI conditions that are then combined in a semi-definite program to maximize the volume of the RCI set while respecting the state and input constraints. We demonstrate through a numerical case study that the proposed data-driven approach can generate RCI sets that are of comparable size to those ...
Polytopic models cover a large class of nonlinear dynamic systems. An algorithm is proposed that par...
This paper proposes two algorithms to find a restricted-complexity robust control invariant (RCI) se...
We propose a novel algorithm to compute low-complexity polytopic robust control invariant (RCI) sets...
We present a direct data-driven approach to synthesize robust control invariant (RCI) sets and their...
This paper presents an algorithm for the computation of full?complexity polytopic robust control inv...
This paper presents an algorithm for the computation of full‐complexity polytopic robust control inv...
This paper presents an algorithm that computes polytopic robust control-invariant (RCI) sets for rat...
For an unknown linear system, starting from noisy open-loop input-state data collected during a fini...
Real-time measurements of the scheduling parameter of linear parameter-varying (LPV) systems enables...
For a discrete-time linear system, we use data from an open-loop experiment to design directly a lin...
This dissertation presents new methods to synthesize disturbance sets and input constraints set for ...
In control engineering, models of the system are commonly used for controller design. A standard con...
A procedure and theoretical results are presented for the problem of determining a minimal robust po...
Polytopic models cover a large class of nonlinear dynamic systems. An algorithm is proposed that par...
This paper proposes two algorithms to find a restricted-complexity robust control invariant (RCI) se...
We propose a novel algorithm to compute low-complexity polytopic robust control invariant (RCI) sets...
We present a direct data-driven approach to synthesize robust control invariant (RCI) sets and their...
This paper presents an algorithm for the computation of full?complexity polytopic robust control inv...
This paper presents an algorithm for the computation of full‐complexity polytopic robust control inv...
This paper presents an algorithm that computes polytopic robust control-invariant (RCI) sets for rat...
For an unknown linear system, starting from noisy open-loop input-state data collected during a fini...
Real-time measurements of the scheduling parameter of linear parameter-varying (LPV) systems enables...
For a discrete-time linear system, we use data from an open-loop experiment to design directly a lin...
This dissertation presents new methods to synthesize disturbance sets and input constraints set for ...
In control engineering, models of the system are commonly used for controller design. A standard con...
A procedure and theoretical results are presented for the problem of determining a minimal robust po...
Polytopic models cover a large class of nonlinear dynamic systems. An algorithm is proposed that par...
This paper proposes two algorithms to find a restricted-complexity robust control invariant (RCI) se...
We propose a novel algorithm to compute low-complexity polytopic robust control invariant (RCI) sets...