In this paper, we propose a novel model predictive control (MPC) framework for output tracking that deals with partially unknown constraints. The MPC scheme optimizes over a learning and a backup trajectory. The learning trajectory aims to explore unknown and potentially unsafe areas, if and only if this might lead to a potential performance improvement. On the contrary, the backup trajectory lies in the known space, and is intended to ensure safety and convergence. The cost function for the learning trajectory is divided into a tracking and an offset cost, while the cost function for the backup trajectory is only marginally considered and only penalizes the offset cost. We show that the proposed MPC scheme is not only able to safely explor...
In this thesis we consider the problem of designing and implementing Model Predictive Controllers (M...
This article is concerned with the tracking of nonequilibrium motions with model predictive control ...
Motion planning and control algorithms for autonomous vehicles need to be safe, and consider future ...
In Model Predictive Control\ua0(MPC) formulations of trajectory tracking problems, infeasible refere...
The problem of navigating an unmanned aerial vehicle (UAV) in an unknown environment is addressed wi...
A novel model predictive control (MPC) formulation, named multi-trajectory MPC (mt-MPC), is presente...
In this paper, we address the safety and efficiency of data-driven model predictive controllers (DD-...
The topic of learning in control has garnered much attention in recent years, with many researchers ...
Model predictive control (MPC) is a common approach to the control of trajectory-following systems. ...
In the design of robust Model Predictive Control (MPC) algorithms, data can be used for primarily tw...
The increasing impact of data-driven technologies across various industries has sparked renewed inte...
International audienceIn this paper, we introduce a novel approach to safe learning-based Model Pred...
Tube-based model predictive control (MPC) is a variant of MPC that is suitable for constrained linea...
In control design, the goal is to synthesize policies which map observations to controlactions. Two ...
Motion planning and control algorithms for autonomous vehicles need to be safe, and consider future ...
In this thesis we consider the problem of designing and implementing Model Predictive Controllers (M...
This article is concerned with the tracking of nonequilibrium motions with model predictive control ...
Motion planning and control algorithms for autonomous vehicles need to be safe, and consider future ...
In Model Predictive Control\ua0(MPC) formulations of trajectory tracking problems, infeasible refere...
The problem of navigating an unmanned aerial vehicle (UAV) in an unknown environment is addressed wi...
A novel model predictive control (MPC) formulation, named multi-trajectory MPC (mt-MPC), is presente...
In this paper, we address the safety and efficiency of data-driven model predictive controllers (DD-...
The topic of learning in control has garnered much attention in recent years, with many researchers ...
Model predictive control (MPC) is a common approach to the control of trajectory-following systems. ...
In the design of robust Model Predictive Control (MPC) algorithms, data can be used for primarily tw...
The increasing impact of data-driven technologies across various industries has sparked renewed inte...
International audienceIn this paper, we introduce a novel approach to safe learning-based Model Pred...
Tube-based model predictive control (MPC) is a variant of MPC that is suitable for constrained linea...
In control design, the goal is to synthesize policies which map observations to controlactions. Two ...
Motion planning and control algorithms for autonomous vehicles need to be safe, and consider future ...
In this thesis we consider the problem of designing and implementing Model Predictive Controllers (M...
This article is concerned with the tracking of nonequilibrium motions with model predictive control ...
Motion planning and control algorithms for autonomous vehicles need to be safe, and consider future ...