In this paper, a one-layer recurrent neural network is proposed for solving pseudoconvex optimization problems subject to linear equality and bound constraints. Compared with the existing neural networks for optimization (e.g., the projection neural networks), the proposed neural network is capable of solving more general pseudoconvex optimization problems with equality and bound constraints. Moreover, it is capable of solving constrained fractional programming problems as a special case. The convergence of the state variables of the proposed neural network to achieve solution optimality is guaranteed as long as the designed parameters in the model are larger than the derived lower bounds. Numerical examples with simulation results illustra...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
Abstract—Recurrent neural networks for solving constrained least absolute deviation (LAD) problems o...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
In this paper, a one-layer recurrent neural network is presented for solving pseudoconvex optimizati...
Invexity is an important notion in nonconvex optimization. In this paper, a one-layer recurrent neur...
This paper presents a novel recurrent time continuous neural network model which performs nonlinear ...
Abstract—In recent years, a recurrent neural network called projection neural network was proposed f...
This paper presents a continuous-time recurrent neural-network model for nonlinear optimization with...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Constrained optimization problems arise widely in scientific research and engineering applications. ...
This paper presents a continuous-time recurrent neural network model for optimizing any continuously...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
Abstract—There exist many recurrent neural networks for solving optimization-related problems. In th...
This paper presents a novel collective neurodynamic optimization method for solving nonconvex optimi...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
Abstract—Recurrent neural networks for solving constrained least absolute deviation (LAD) problems o...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
In this paper, a one-layer recurrent neural network is presented for solving pseudoconvex optimizati...
Invexity is an important notion in nonconvex optimization. In this paper, a one-layer recurrent neur...
This paper presents a novel recurrent time continuous neural network model which performs nonlinear ...
Abstract—In recent years, a recurrent neural network called projection neural network was proposed f...
This paper presents a continuous-time recurrent neural-network model for nonlinear optimization with...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Constrained optimization problems arise widely in scientific research and engineering applications. ...
This paper presents a continuous-time recurrent neural network model for optimizing any continuously...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
Abstract—There exist many recurrent neural networks for solving optimization-related problems. In th...
This paper presents a novel collective neurodynamic optimization method for solving nonconvex optimi...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
Abstract—Recurrent neural networks for solving constrained least absolute deviation (LAD) problems o...
The subject of this thesis is an application of artificial neural networks to solving linear and non...