An Aggressive Cuckoo Search Algorithm for Optimum Power Allocation in a Cdma-based Cellular NetworkAn Aggressive Cuckoo Search Algorithm for Optimum Power Allocation in a Cdma-based Cellular Network

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Mwitia, Shawn M
Mwitia, Shawn M

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Article
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University of Nairobi
University of Nairobi

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This paper proposes an aggressive cuckoo search algorithm for optimum power allocation in a CDMA-based cellular network. To make the cuckoo search algorithm aggressive, adaptive parameters are used to vary the step size and probability of discovery. Furthermore, the Lévy flight is replaced with the Beta distribution to further improve the performance of the algorithm. To prove that the proposed algorithm is superior, the algorithm is tested on 23 benchmark test functions and its results are compared with those of 10 other standard optimization algorithms and 4 other advanced optimization algorithms. The performance of the proposed algorithm is proved via the statistical analysis of the results using the Wilcoxon rank-sum test. The proposed algorithm is then utilized in determining the optimal uplink power for multiple users in a CDMA-based cellular network in three different scenarios through Rician fading channels. The resultant allocated power should ensure that each mobile station meets its predetermined signal-to-interference-and-noise ratio while utilizing the least amount of power.

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Mwitia, Shawn Muthomi, and Davies Rene Segera. "An Aggressive Cuckoo Search Algorithm for Optimum Power Allocation in a CDMA-Based Cellular Network." The Scientific World Journal 2022 (2022).
Mwitia, Shawn Muthomi, and Davies Rene Segera. "An Aggressive Cuckoo Search Algorithm for Optimum Power Allocation in a CDMA-Based Cellular Network." The Scientific World Journal 2022 (2022).

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