This paper presents a recurrent neural circuit for solving linear programming problems. The objective is to minimize a linear cost function subject to linear constraints. The proposed circuit employs non-linear feedback, in the form of unipolar comparators, to introduce transcendental terms in the energy function ensuring fast convergence to the solution. The proof of validity of the energy function is also provided. The hardware complexity of the proposed circuit compares favorably with other proposed circuits for the same task. PSPICE simulation results are presented for a chosen optimization problem and are found to agree with the algebraic solution. Hardware test results for a 2–variable problem further serve to strengthen the proposed ...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
This paper is concerned with utilizing analog circuits to solve various linear and nonlinear program...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
In this paper, neural networks for online solution of linear and nonlinear programming problems are ...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
AbstractIn this paper linear and quadratic programming problems are solved using a novel recurrent a...
We propose and analyze two classes of neural network models for solving linear programming (LP) prob...
[[abstract]]© 1992 Institute of Electrical and Electronics Engineers - Recurrent artificial neural n...
In this paper, a recurrent neural network is proposed using the augmented Lagrangian method for solv...
Constrained optimization problems entail the minimization or maximization of a linear or quadratic o...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
This paper is concerned with utilizing analog circuits to solve various linear and nonlinear program...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
In this paper, neural networks for online solution of linear and nonlinear programming problems are ...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
AbstractIn this paper linear and quadratic programming problems are solved using a novel recurrent a...
We propose and analyze two classes of neural network models for solving linear programming (LP) prob...
[[abstract]]© 1992 Institute of Electrical and Electronics Engineers - Recurrent artificial neural n...
In this paper, a recurrent neural network is proposed using the augmented Lagrangian method for solv...
Constrained optimization problems entail the minimization or maximization of a linear or quadratic o...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...