Title :
A two-phase optimization neural network
Author :
Maa, Chia-Yiu ; Schanblatt, M.A.
Author_Institution :
Electronic Data Systems, Auburn Hills, MI, USA
fDate :
11/1/1992 12:00:00 AM
Abstract :
A novel two-phase neural network that is suitable for solving a large class of constrained or unconstrained optimization problem is presented. For both types of problems with solutions lying in the interior of the feasible regions, the phase-one structure of the network alone is sufficient. When the solutions of constrained problems are on the boundary of the feasible regions, the proposed two-phase network is capable of achieving the exact solutions, in contrast to existing optimization neural networks which can obtain only approximate solutions. Furthermore, the network automatically provides the corresponding Lagrange multiplier associated with each constraint. Thus, for linear programming, the network solves both the primal problems and their dual problems simultaneously
Keywords :
mathematics computing; neural nets; optimisation; Lagrange multiplier; constrained problems; dual problems; linear programming; mathematics computing; optimization; primal problems; two-phase neural network; Artificial neural networks; Constraint optimization; Data systems; Lagrangian functions; Linear programming; Lyapunov method; Mathematical programming; Neural networks; Neurons; Research and development;
Journal_Title :
Neural Networks, IEEE Transactions on