Abstract

The exponential growth in data traffic due to the modernization of smart devices has resulted in the need for a high-capacity wireless network in the future. To successfully deploy 5G network, it must be capable of handling the growth in the data traffic. The increasing amount of traffic volume puts excessive stress on the important factors of the resource allocation methods such as scalability and throughput. In this paper, we define a network planning as an optimization problem with the decision variables such as transmission power and transmitter (BS) location in 5G networks. The decision variables lent themselves to interesting implementation using several heuristic approaches, such as differential evolution (DE) algorithm and Real-coded Genetic Algorithm (RGA). The key contribution of this paper is that we modified RGA-based method to find the optimal configuration of BSs not only by just offering an optimal coverage of underutilized BSs but also by optimizing the amounts of power consumption. A comparison is also carried out to evaluate the performance of the conventional approach of DE and standard RGA with our modified RGA approach. The experimental results showed that our modified RGA can find the optimal configuration of 5G/LTE network planning problems, which is better performed than DE and standard RGA.

Highlights

  • The green domain is a new stage which aims to protect Earth and contribute to reducing the global warming by efficiently optimizing the energy consumption

  • Long-Term Evolution (LTE) which is expected to be used with 5G networks has to deal with the reduced cell size of a base stations (BSs) [4], which leads to an increase in the number of BSs and raises a concern about increasing energy consumption of BSs

  • We found out that standard Real-coded Genetic Algorithm (RGA) cannot converge to an optimal solution because its offspring is created by shuffling all chromosomes of its parents

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Summary

Introduction

The green domain is a new stage which aims to protect Earth and contribute to reducing the global warming by efficiently optimizing the energy consumption. The current communications technology has progressed impressively, it is still facing the increasing demands due to the development of smart devices For this reason, various intensive studies towards 5G networks are being developed beyond the current 4G/IMTAdvanced standards and are moving towards the phase of mobile communication. Real-coded Genetic Algorithm (RGA) was modified to allocate the base stations efficiently in a dense urban area regarding green aspects based on the user’s optimal position. The experimental results obtained from our proposed method with the conclusion to this paper were illustrated in Sections 5 and 6, respectively

Related Work
System Model
The Proposed Algorithm
15 GHz FDD 100
Experimental Results
Conclusion
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