As control of large-scale complex systems has become more and more prevalent within control, so has the need for analyzing such controlled systems. This is particularly due to the fact that many of the control design approaches tend to neglect intricacies in such systems, e.g., uncertainties, time delays, nonlinearities, so as to simplify the design procedure. Robustness analysis techniques allow us to assess the effect of such neglected intricacies on performance and stability. Performing robustness analysis commonly requires solving an optimization problem. However, the number of variables of this optimization problem, and hence the computational time, scales badly with the dimension of the system. This limits our ability to analyze large...
Smart grid proactively uses the state-of-the-art technologies in communications, computing, and cont...
In this book, theory of large scale optimization is introduced with case studies of real-world probl...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
As control of large-scale complex systems has become more and more prevalent within control, so has ...
This book offers a concise and in-depth exposition of specific algorithmic solutions for distributed...
Distributed optimization is a very important concept with applications in control theory and many re...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Abstract—Robustness of optimization models for networking problems has been an under-explored area. ...
This paper proposes a novel approach to resilient distributed optimization with quadratic costs in a...
The design of distributed optimization-based controllers for large-scale systems (LSSs) implies ever...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
Distributed Decision Making and Control is a mathematical treatment of relevant problems in distribu...
©1995 SPIE--The International Society for Optical Engineering. One print or electronic copy may be m...
This thesis frames command and control (C2) design as a type of assignment problem involving tasks, ...
We present D-Phi iteration: an algorithm for distributed, localized, and scalable robust control of ...
Smart grid proactively uses the state-of-the-art technologies in communications, computing, and cont...
In this book, theory of large scale optimization is introduced with case studies of real-world probl...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
As control of large-scale complex systems has become more and more prevalent within control, so has ...
This book offers a concise and in-depth exposition of specific algorithmic solutions for distributed...
Distributed optimization is a very important concept with applications in control theory and many re...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Abstract—Robustness of optimization models for networking problems has been an under-explored area. ...
This paper proposes a novel approach to resilient distributed optimization with quadratic costs in a...
The design of distributed optimization-based controllers for large-scale systems (LSSs) implies ever...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...
Distributed Decision Making and Control is a mathematical treatment of relevant problems in distribu...
©1995 SPIE--The International Society for Optical Engineering. One print or electronic copy may be m...
This thesis frames command and control (C2) design as a type of assignment problem involving tasks, ...
We present D-Phi iteration: an algorithm for distributed, localized, and scalable robust control of ...
Smart grid proactively uses the state-of-the-art technologies in communications, computing, and cont...
In this book, theory of large scale optimization is introduced with case studies of real-world probl...
This thesis aims to develop and implement both nonlinear and linear distributed optimization methods...