This thesis considers methods for synthesis of linear quadratic controllers for large-scale, interconnected systems. Conventional methods that solve the linear quadratic control problem are only applicable to systems with moderate size, due to the rapid increase in both computational time and memory requirements as the system size increases. The methods presented in this thesis show a much slower increase in these requirements when faced with system matrices with a sparse structure. Hence, they are useful for control design for systems of large order, since they usually have sparse systems matrices. An equally important feature of the methods is that the controllers are restricted to have a distributed nature, meaning that they respect a po...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Modern cyber-physical systems, such as the smart grid, software-defined networks, and automated high...
This paper focuses on optimal control problems for large scale systems with a decomposable cost func...
Sparsity and parallel algorithms: two approaches to beat the curse of dimensionality. By Peter Benne...
In this paper we propose a new control-oriented design technique to enhance the algorithmic performa...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
In this work we design an iterative distributed optimization algorithm, based on the well-known dist...
We study the distributed Linear Quadratic Gaussian (LQG) control problem in discrete-time and finite...
The author discusses a number of numerical linear algebra techniques for large scale problems in sys...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
Distributed control of large-scale dynamical systems poses a new challenge to the field of control d...
A major challenge faced in the design of large-scale cyber-physical systems, such as power systems, ...
In previous work, we proposed the localized linear quadratic regulator (LLQR) method as a scalable w...
In this paper, we propose a distributed LQR control method, applicable to physically coupled systems...
A previous paper introduced an online gradient method to iteratively update local controllers for im...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Modern cyber-physical systems, such as the smart grid, software-defined networks, and automated high...
This paper focuses on optimal control problems for large scale systems with a decomposable cost func...
Sparsity and parallel algorithms: two approaches to beat the curse of dimensionality. By Peter Benne...
In this paper we propose a new control-oriented design technique to enhance the algorithmic performa...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
In this work we design an iterative distributed optimization algorithm, based on the well-known dist...
We study the distributed Linear Quadratic Gaussian (LQG) control problem in discrete-time and finite...
The author discusses a number of numerical linear algebra techniques for large scale problems in sys...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
Distributed control of large-scale dynamical systems poses a new challenge to the field of control d...
A major challenge faced in the design of large-scale cyber-physical systems, such as power systems, ...
In previous work, we proposed the localized linear quadratic regulator (LLQR) method as a scalable w...
In this paper, we propose a distributed LQR control method, applicable to physically coupled systems...
A previous paper introduced an online gradient method to iteratively update local controllers for im...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Modern cyber-physical systems, such as the smart grid, software-defined networks, and automated high...
This paper focuses on optimal control problems for large scale systems with a decomposable cost func...