Title :
Analog neural networks as asymptotically exact dynamic solvers
Author :
Biro, J.J. ; Heszberger, Zalan
Author_Institution :
Budapest University of Technology and Economics
Abstract :
The paper deals with analog neural networks which can be used for solving nonlinear constrained optimization tasks using the penalty function approach. The neural model developed can be regarded as asymptotically exact dynamic solver in a sense that the equilibrium state represents a solution which can be arbitrarily close to that of the original constrained optimization task. Although it is a quite natural requirement, generally it can be fulfilled only with infinitely large penalty multipliers. The neural network presented provides another way for generating solutions arbitrarily close to the exact one at finite penalty multipliers. The usefulness of the optimization neural network presented is also illustrated by numerical examples.
Keywords :
neural nets; nonlinear programming; analog neural networks; asymptotically exact dynamic solvers; equilibrium state; nonlinear constrained optimization tasks; penalty function; penalty multipliers; Artificial neural networks; Birds; Circuits; Constraint optimization; Electronic mail; Hopfield neural networks; Informatics; Linear programming; Neural networks; Paper technology;
Conference_Titel :
Neural Networks, 2004. Proceedings. 2004 IEEE International Joint Conference on
Print_ISBN :
0-7803-8359-1
DOI :
10.1109/IJCNN.2004.1380976