Article ID Journal Published Year Pages File Type
9506639 Applied Mathematics and Computation 2005 21 Pages PDF
Abstract
Two new classes of neural networks for solving constrained quadratic programming problems are presented. The main advantage of these networks is the requirement to use economic analog multipliers for variables. The numerical simulations demonstrate that in the new neural networks not only the cost of the hardware implementation is not relatively expensive, but also accuracy of the solution is greatly good. The network dynamic behaviors are discussed. The numerical simulations are shown that, an optimal solution of the quadratic problems is an equilibrium point of the neural dynamics, and vise versa. We show that these networks find the solution of both primal and dual problems, and converge to the corresponding exact solutions globally. The proposed new neural networks models are fully stable.
Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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