AbstractThe design of an optimal (output feedback) reduced order control (ROC) law for a dynamic control system is an important example of a difficult and in general non-convex (nonlinear) optimal control problem. In this paper we present a novel numerical strategy to the solution of the ROC design problem if the control system is described by partial differential equations (PDE). The discretization of the ROC problem with PDE constraints leads to a large scale (non-convex) nonlinear semidefinite program (NSDP). For reducing the size of the high dimensional control system, first, we apply a proper orthogonal decomposition (POD) method to the discretized PDE. The POD approach leads to a low dimensional model of the control system. Thereafter...
AbstractA reduced-order method based on approximate inertial manifolds is applied to optimal control...
Model predictive controllers use dynamics models to solve constrained optimal control problems. Howe...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
In this paper, we investigate infinite horizon optimal control problems for parametrized partial dif...
A reduced order output feedback controller is designed for a linear time invariant system, which gua...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
A reduced order output feedback controller is designed for a linear time invariant system, which gua...
A variety of partial differential equations (PDE) can govern the spatial and time evolution of fluid...
The standard state space solutions to the ℋ∞ control problem for linear time invariant systems are g...
The synthesis of suboptimal feedback laws for controlling nonlinear dynamics arising from semi-discr...
In this article a stabilizing feedback control is computed for a semilinear parabolic partial differ...
The Dynamic Programming approach allows to compute a feedback control for nonlinear problems, but su...
A new approach to model order reduction of nonlinear control systems is aimed at developing persiste...
This article considers the stabilization by output feedback controllers for discrete-time systems. T...
In this paper infinite horizon optimal control problems for nonlinear high-dimensional dynamical sys...
AbstractA reduced-order method based on approximate inertial manifolds is applied to optimal control...
Model predictive controllers use dynamics models to solve constrained optimal control problems. Howe...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
In this paper, we investigate infinite horizon optimal control problems for parametrized partial dif...
A reduced order output feedback controller is designed for a linear time invariant system, which gua...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
A reduced order output feedback controller is designed for a linear time invariant system, which gua...
A variety of partial differential equations (PDE) can govern the spatial and time evolution of fluid...
The standard state space solutions to the ℋ∞ control problem for linear time invariant systems are g...
The synthesis of suboptimal feedback laws for controlling nonlinear dynamics arising from semi-discr...
In this article a stabilizing feedback control is computed for a semilinear parabolic partial differ...
The Dynamic Programming approach allows to compute a feedback control for nonlinear problems, but su...
A new approach to model order reduction of nonlinear control systems is aimed at developing persiste...
This article considers the stabilization by output feedback controllers for discrete-time systems. T...
In this paper infinite horizon optimal control problems for nonlinear high-dimensional dynamical sys...
AbstractA reduced-order method based on approximate inertial manifolds is applied to optimal control...
Model predictive controllers use dynamics models to solve constrained optimal control problems. Howe...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...