Data-based safe gain-scheduling controllers are presented for discrete-time linear parameter-varying systems (LPV) with polytopic models. First, $\lambda$-contractivity conditions are provided under which safety and stability of the LPV systems are unified through Minkowski functions of the safe sets. Then, to bypass the requirement to identify the system dynamics, a data-based representation of the closed-loop LPV system is provided to directly exploit collected data and construct a safe controller. It is shown that weaker data richness requirements are needed to directly learn a closed-loop safe control policy than to identify the LPV system. The closed-loop data-based representation is leveraged to directly design data-driven gain-schedu...
This paper introduces the Generalized Action Governor, which is a supervisory scheme for augmenting ...
For a discrete-time linear system, we use data from an open-loop experiment to design directly a lin...
In this paper, we address the safety and efficiency of data-driven model predictive controllers (DD-...
We present a direct data-driven approach to synthesize robust control invariant (RCI) sets and their...
We derive novel methods that allow to synthesize LPV state-feedback controllers directly from a sing...
Safe control of constrained linear systems under both epistemic and aleatory uncertainties is consid...
This paper presents synthesis procedures for the design of both robust and gain-scheduled H∞ static ...
Real-time measurements of the scheduling parameter of linear parameter-varying (LPV) systems enables...
We consider the problem of designing finite-horizon safe controllers for a dynamical system for whic...
This paper considers the general problem of transitioning theoretically safe controllers to hardware...
The problem of safely learning and controlling a dynamical system - i.e., of stabilizing an original...
This paper presents an iterative algorithm to compute a Robust Control Invariant (RCI) set, along wi...
We consider the problem of designing an invariant set using only a finite set of input-state data co...
Control, and in particular learning-based control, is challenging in large-scale and safety-critical...
Control Barrier Functions (CBFs) have been demonstrated to be a powerful tool for safety-critical co...
This paper introduces the Generalized Action Governor, which is a supervisory scheme for augmenting ...
For a discrete-time linear system, we use data from an open-loop experiment to design directly a lin...
In this paper, we address the safety and efficiency of data-driven model predictive controllers (DD-...
We present a direct data-driven approach to synthesize robust control invariant (RCI) sets and their...
We derive novel methods that allow to synthesize LPV state-feedback controllers directly from a sing...
Safe control of constrained linear systems under both epistemic and aleatory uncertainties is consid...
This paper presents synthesis procedures for the design of both robust and gain-scheduled H∞ static ...
Real-time measurements of the scheduling parameter of linear parameter-varying (LPV) systems enables...
We consider the problem of designing finite-horizon safe controllers for a dynamical system for whic...
This paper considers the general problem of transitioning theoretically safe controllers to hardware...
The problem of safely learning and controlling a dynamical system - i.e., of stabilizing an original...
This paper presents an iterative algorithm to compute a Robust Control Invariant (RCI) set, along wi...
We consider the problem of designing an invariant set using only a finite set of input-state data co...
Control, and in particular learning-based control, is challenging in large-scale and safety-critical...
Control Barrier Functions (CBFs) have been demonstrated to be a powerful tool for safety-critical co...
This paper introduces the Generalized Action Governor, which is a supervisory scheme for augmenting ...
For a discrete-time linear system, we use data from an open-loop experiment to design directly a lin...
In this paper, we address the safety and efficiency of data-driven model predictive controllers (DD-...