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Algorithms for Load Balancing in Next-Generation Mobile Networks: A Systematic Literature Review

Juan Ochoa-Aldeán (), Carlos Silva-Cárdenas, Renato Torres, Jorge Ivan Gonzalez and Sergio Fortes
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Juan Ochoa-Aldeán: Facultad de Energía, Universidad Nacional de Loja, Loja 110111, Ecuador
Carlos Silva-Cárdenas: Departamento de Ingeniería, Pontificia Universidad Católica de Perú, Lima 15088, Peru
Renato Torres: Facultad de Energía, Universidad Nacional de Loja, Loja 110111, Ecuador
Jorge Ivan Gonzalez: Facultad de Energía, Universidad Nacional de Loja, Loja 110111, Ecuador
Sergio Fortes: Instituto de Telecomunicación (TELMA), Universidad de Málaga, 29010 Málaga, Spain

Future Internet, 2025, vol. 17, issue 7, 1-24

Abstract: Background: Machine learning methods are increasingly being used in mobile network optimization systems, especially next-generation mobile networks. The need for enhanced radio resource allocation schemes, improved user mobility and increased throughput, driven by a rising demand for data, has necessitated the development of diverse algorithms that optimize output values based on varied input parameters. In this context, we identify the main topics related to cellular networks and machine learning algorithms in order to pinpoint areas where the optimization of parameters is crucial. Furthermore, the wide range of available algorithms often leads to confusion and disorder during classification processes. It is crucial to note that next-generation networks are expected to require reduced latency times, especially for sensitive applications such as Industry 4.0. Research Question: An analysis of the existing literature on mobile network load balancing methods was conducted to identify systems that operate using semi-automatic, automatic and hybrid algorithms. Our research question is as follows: What are the automatic, semi-automatic and hybrid load balancing algorithms that can be applied to next-generation mobile networks? Contribution: This paper aims to present a comprehensive analysis and classification of the algorithms used in this area of study; in order to identify the most suitable for load balancing optimization in next-generation mobile networks, we have organized the classification into three categories, automatic, semi-automatic and hybrid, which will allow for a clear and concise idea of both theoretical and field studies that relate these three types of algorithms with next-generation networks. Figures and tables illustrate the number of algorithms classified by type. In addition, the most important articles related to this topic from five different scientific databases are summarized. Methodology: For this research, we employed the PRISMA method to conduct a systematic literature review of the aforementioned study areas. Findings: The results show that, despite the scarce literature on the subject, the use of load balancing algorithms significantly influences the deployment and performance of next-generation mobile networks. This study highlights the critical role that algorithm selection should play in 5G network optimization, in particular to address latency reduction, dynamic resource allocation and scalability in dense user environments, key challenges for applications such as industrial automation and real-time communications. Our classification framework provides a basis for operators to evaluate algorithmic trade-offs in scenarios such as network fragmentation or edge computing. To fill existing gaps, we propose further research on AI-driven hybrid models that integrate real-time data analytics with predictive algorithms, enabling proactive load management in ultra-reliable 5G/6G architectures. Given this background, it is crucial to conduct further research on the effects of technologies used for load balancing optimization. This line of research is worthy of consideration.

Keywords: PRISMA; machine learning; deep learning; context-aware (search for similar items in EconPapers)
JEL-codes: O3 (search for similar items in EconPapers)
Date: 2025
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