Hybrid simplex genetic algorithm for blind equalization using RBF networks

The purpose of the paper is to derive a simplex genetic algorithm (GA) for blind equalization using RBF networks. In order to reduce the computation cost, this algorithm searches the center's elements instead of centers because of the inter-relation between the centers. Furthermore, by introducing the simplex operator into the GA, the proposed algorithm presents a fast convergence characteristic in simulation.

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