A novel control strategy is proposed to enable uncertainty minimization through knowledge infusion into the closed loop. The developed methodology aims the application of predictive control to regulate the complex anesthetic- hemodynamic (AH) interaction in a set of patients during general anesthesia. A special focus is given to solutions for minimizing the risk of instability arising from large uncertainty in the patient model dynamics. The paper explores the concept of digitalizing surgical actions as part of the natural mimicking strategy of actual anesthesiologists' real-life decision-making process. The simulations supporting the claims use an AH simulator. A feasibility study for solutions in an actual constrained input-output variabl...
The main challenge of anesthesia is the maintenance of the desired sedation level before, during, an...
The application of closed-loop control systems in biomedicine unlocks prospects for optimized drug d...
This paper presents the application of predictive control to drug dosing during anesthesia in patien...
A novel control strategy is proposed to enable uncertainty minimization through knowledge infusion i...
This paper proposes a Model Predictive Control (MPC) approach of both anesthesia and hemodynamic sys...
In this paper, a centralized model predictive control algorithm to simultaneously regulate hemodynam...
Many regulatory loops in drug delivery systems for depth of anesthesia optimization problem consider...
This thesis investigates the design and performance of a controller for the maintenance of anesthesi...
All drug regulatory paradigms are dependent on the hemodynamic system as it serves to distribute and...
In biomedical systems, feedback control can be applied whenever adequate sensors, actuators, and suf...
In this paper, a non-cooperative distributed model predictive control (DMPC) algorithm for anaesthes...
This paper describes strategies toward model-based automation of intravenous anaesthesia employing a...
This thesis investigates the design and performance of a model predictive controller (MPC) for the a...
We are witnessing a notable rise in the translational use of information technology and control syst...
The main challenge of anesthesia is the maintenance of the desired sedation level before, during, an...
The application of closed-loop control systems in biomedicine unlocks prospects for optimized drug d...
This paper presents the application of predictive control to drug dosing during anesthesia in patien...
A novel control strategy is proposed to enable uncertainty minimization through knowledge infusion i...
This paper proposes a Model Predictive Control (MPC) approach of both anesthesia and hemodynamic sys...
In this paper, a centralized model predictive control algorithm to simultaneously regulate hemodynam...
Many regulatory loops in drug delivery systems for depth of anesthesia optimization problem consider...
This thesis investigates the design and performance of a controller for the maintenance of anesthesi...
All drug regulatory paradigms are dependent on the hemodynamic system as it serves to distribute and...
In biomedical systems, feedback control can be applied whenever adequate sensors, actuators, and suf...
In this paper, a non-cooperative distributed model predictive control (DMPC) algorithm for anaesthes...
This paper describes strategies toward model-based automation of intravenous anaesthesia employing a...
This thesis investigates the design and performance of a model predictive controller (MPC) for the a...
We are witnessing a notable rise in the translational use of information technology and control syst...
The main challenge of anesthesia is the maintenance of the desired sedation level before, during, an...
The application of closed-loop control systems in biomedicine unlocks prospects for optimized drug d...
This paper presents the application of predictive control to drug dosing during anesthesia in patien...