This paper presents a neurodynamic optimization approach to robust pole assignment for synthesis of piecewise linear control systems via state feedback. The robust pole assignment is formulated as a pseudoconvex optimization problem with linear equality constraints where a robustness measure is considered as the objective function. The robustness is achieved by means of minimizing the spectral condition number of the closed-loop eigensystem. Two recurrent neural networks with guaranteed global convergence are applied for solving the optimization problem in real time. Simulation results are included to substantiate the effectiveness and demonstrate the characteristics of the proposed approach. © 2013 IEEE
Abstract:- In this paper, in order to improve the training of a neural controller implemented using ...
In [6], the pole assignment problem was considered for the control system ẋ = Ax + Bu with linear st...
Le, Xinyi.Thesis Ph.D. Chinese University of Hong Kong 2016.Includes bibliographical references (lea...
A neurodynamic optimization approach is proposed for robust pole assignment problem of second-order ...
This paper presents a neurodynamic approach to model predictive control (MPC) of constrained piecewi...
© 2014 IEEE. In this paper, a neurodynamic optimization approach is proposed for robust eigenstructu...
© 1982-2012 IEEE. This paper presents a collective neurodynamic approach to robust model predictive ...
This paper provides an approach for output feedback robust approximate pole assignment. It is formul...
We propose a method for evolving neural network controllers robust with respect to variations of the...
This paper is concerned with robust pole assignment optimization for synthesizing feedback control s...
A recurrent neural network approach to robust approximate pole assignment for second-order systems i...
We propose a method for evolving neural network controllers robust with respect to variations of the...
Abstract. In this paper, first a new algorithm for pole assignment of closed-loop multi-variable con...
Numerical methods are described for determining robust, or well-conditioned, solutions to the proble...
The problem of robust pole assignment by feedback in a linear, multivariable, time-invariant system ...
Abstract:- In this paper, in order to improve the training of a neural controller implemented using ...
In [6], the pole assignment problem was considered for the control system ẋ = Ax + Bu with linear st...
Le, Xinyi.Thesis Ph.D. Chinese University of Hong Kong 2016.Includes bibliographical references (lea...
A neurodynamic optimization approach is proposed for robust pole assignment problem of second-order ...
This paper presents a neurodynamic approach to model predictive control (MPC) of constrained piecewi...
© 2014 IEEE. In this paper, a neurodynamic optimization approach is proposed for robust eigenstructu...
© 1982-2012 IEEE. This paper presents a collective neurodynamic approach to robust model predictive ...
This paper provides an approach for output feedback robust approximate pole assignment. It is formul...
We propose a method for evolving neural network controllers robust with respect to variations of the...
This paper is concerned with robust pole assignment optimization for synthesizing feedback control s...
A recurrent neural network approach to robust approximate pole assignment for second-order systems i...
We propose a method for evolving neural network controllers robust with respect to variations of the...
Abstract. In this paper, first a new algorithm for pole assignment of closed-loop multi-variable con...
Numerical methods are described for determining robust, or well-conditioned, solutions to the proble...
The problem of robust pole assignment by feedback in a linear, multivariable, time-invariant system ...
Abstract:- In this paper, in order to improve the training of a neural controller implemented using ...
In [6], the pole assignment problem was considered for the control system ẋ = Ax + Bu with linear st...
Le, Xinyi.Thesis Ph.D. Chinese University of Hong Kong 2016.Includes bibliographical references (lea...