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Population Adaptation for Genetic Algorithm-based Cognitive Radios

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Abstract

Genetic algorithms are best suited for optimization problems involving large search spaces. The problem space encountered when optimizing the transmission parameters of an agile or cognitive radio for a given wireless environment and set of performance objectives can become prohibitively large due to the high number of parameters and their many possible values. Recent research has demonstrated that genetic algorithms are a viable implementation technique for cognitive radio engines. However, the time required for the genetic algorithms to come to a solution substantially increases as the system complexity grows. In this paper, we present a population adaptation technique for genetic algorithms that takes advantage of the information from previous cognition cycles in order to reduce the time required to reach an optimal decision. Our simulation results demonstrate that the amount of information from the previous cognition cycle can be determined from the environmental variation factor, which represents the amount of change in the environment parameters since the previous cognition cycle.

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Notes

  1. Empirically, we find α = 4 is sufficient to provide approximately linear relationship between the BER values and the fitness score.

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Correspondence to Timothy R. Newman.

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Newman, T.R., Rajbanshi, R., Wyglinski, A.M. et al. Population Adaptation for Genetic Algorithm-based Cognitive Radios. Mobile Netw Appl 13, 442–451 (2008). https://doi.org/10.1007/s11036-008-0079-8

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  • DOI: https://doi.org/10.1007/s11036-008-0079-8

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