Multiuser detection using soft particle swarm optimization along with radial basis function
نویسندگان
چکیده
The multiuser detection (MUD) problem was addressed as a pattern classification problem. Due to their strength in solving nonlinear separable problems, radial basis functions, aided by soft particle swarm optimization, were proposed to perform MUD for a synchronous direct sequence code division multiple access system. The proposed solution was shown to exhibit performance better than a number of other suboptimum detectors including the genetic algorithm and the classical particle swarm optimization algorithm.
منابع مشابه
Radial Basis Functions and Pso Assisted Multiuser Detection for Ds-cdma
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