A numerical approach for optimal control model of the convex semi-infinite programming
Subject Areas : Non linear Programming
1 - Department of Mathematics, Saveh Branch, Islamic Azad University, Saveh, Iran.
Keywords: Neural Networks, Optimal Control, Iterative dynamic programming, Convex semi-infinite programming,
Abstract :
In this paper, convex semi-infinite programmingis converted to an optimal control model of neural networks and the optimal control model issolved by iterative dynamicprogramming method. In final, numerical examples are provided forillustration of the purposed method.
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