Please use this identifier to cite or link to this item: https://repositorio.ufu.br/handle/123456789/48073
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dc.creatorResende, Getúlio Martins-
dc.date.accessioned2026-01-26T14:15:23Z-
dc.date.available2026-01-26T14:15:23Z-
dc.date.issued2025-12-19-
dc.identifier.citationRESENDE, Getúlio Martins. A Dynamic GPF scheduler proposal backed by Differential Evolution and Neural Network on 5G HetNet simulated scenarios. 2025. 77 f. Dissertação (Mestrado em Engenharia Elétrica) - Universidade Federal de Uberlândia, Uberlândia, 2026. DOI http://doi.org/10.14393/ufu.di.2025.731.pt_BR
dc.identifier.urihttps://repositorio.ufu.br/handle/123456789/48073-
dc.description.abstractTo achieve the desired 5G goals, a network must be efficient and fair simultaneously, allowing high data rates for regular users while also equally serving low-power users. Static schedulers, as the name implies, don’t change their scheduling policy regardless of the number of users, giving rise to the need for dynamic schedulers that can shift this paradigm by sensing the number of network users and other parameters like Signal-to-Interferenceplus- Noise Ratio (SINR) and changing the scheduling policy accordingly, raising network efficiency and fairness. Thus, this work presents an optimization technique that uses the Differential Evolution (DE) algorithm and, later, trains a feedforward Neural Network (NN) to mimic the DE’s decision-making to act as a dynamic Generalized Proportional Fair (GPF), adapting its two internal parameters, α and β, assuring a threshold Jain’s fairness index value while seeking a throughput maximization in a simulated 5G Heterogeneous Network (HetNet). Results show that the method achieves a minimal 0.7 Jain’s fairness index for most numbers of users, from 40 to 200 users, while having a better average throughput when compared to a related scheduler. It was also noted that the implemented DE algorithm took an impractical runtime to work as an online optimizer; in contrast, using the created dynamic NN scheduler added only 0.03% to 0.57% in simulation runtime compared to GPF.pt_BR
dc.languageengpt_BR
dc.publisherUniversidade Federal de Uberlândiapt_BR
dc.rightsAcesso Embargadopt_BR
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/us/*
dc.subject5Gpt_BR
dc.subjectDifferential Evolution (DE)pt_BR
dc.subjectGeneralized Proportional Fair (GPF) schedulerpt_BR
dc.subjectHeterogeneous Network (HetNet)pt_BR
dc.subjectNeural Networkpt_BR
dc.subjectProportional Fair (PF) schedulerpt_BR
dc.subjectEngenharia elétricapt_BR
dc.titleA Dynamic GPF scheduler proposal backed by Differential Evolution and Neural Network on 5G HetNet simulated scenariospt_BR
dc.title.alternativeUma proposta de Escalonador GPF Dinâmico com apoio de Evolução Diferencial e Rede Neural em cenários 5G HetNet simuladospt_BR
dc.typeDissertaçãopt_BR
dc.contributor.advisor1Silva, Éderson Rosa da-
dc.contributor.advisor1Latteshttp://lattes.cnpq.br/0745957106999584pt_BR
dc.contributor.referee1Silva, Ederson Rosa da-
dc.contributor.referee1Latteshttp://lattes.cnpq.br/0745957106999584pt_BR
dc.contributor.referee2Mateus, Alexandre Coutinho-
dc.contributor.referee2Latteshttp://lattes.cnpq.br/5723816513897339pt_BR
dc.contributor.referee3Soares, Claiton Luiz-
dc.creator.Latteshttp://lattes.cnpq.br/3654025563542718pt_BR
dc.description.degreenameDissertação (Mestrado)pt_BR
dc.description.resumoTo achieve the desired 5G goals, a network must be efficient and fair simultaneously, allowing high data rates for regular users while also equally serving low-power users. Static schedulers, as the name implies, don’t change their scheduling policy regardless of the number of users, giving rise to the need for dynamic schedulers that can shift this paradigm by sensing the number of network users and other parameters like Signal-to-Interferenceplus- Noise Ratio (SINR) and changing the scheduling policy accordingly, raising network efficiency and fairness. Thus, this work presents an optimization technique that uses the Differential Evolution (DE) algorithm and, later, trains a feedforward Neural Network (NN) to mimic the DE’s decision-making to act as a dynamic Generalized Proportional Fair (GPF), adapting its two internal parameters, α and β, assuring a threshold Jain’s fairness index value while seeking a throughput maximization in a simulated 5G Heterogeneous Network (HetNet). Results show that the method achieves a minimal 0.7 Jain’s fairness index for most numbers of users, from 40 to 200 users, while having a better average throughput when compared to a related scheduler. It was also noted that the implemented DE algorithm took an impractical runtime to work as an online optimizer; in contrast, using the created dynamic NN scheduler added only 0.03% to 0.57% in simulation runtime compared to GPF.pt_BR
dc.publisher.countryBrasilpt_BR
dc.publisher.programPrograma de Pós-graduação em Engenharia Elétricapt_BR
dc.sizeorduration77pt_BR
dc.subject.cnpqCNPQ::ENGENHARIAS::ENGENHARIA ELETRICA::TELECOMUNICACOESpt_BR
dc.embargo.terms"III - resultados de pesquisa cujo conteúdo seja passível de ser patenteado ou publicado em livros e capítulos;"pt_BR
dc.identifier.doihttp://doi.org/10.14393/ufu.di.2025.731pt_BR
dc.subject.autorizadoEngenharia elétricapt_BR
dc.description.embargo2027-12-19-
dc.subject.odsODS::ODS 12. Consumo e produção responsáveis - Assegurar padrões de produção e de consumo sustentáveis.pt_BR
Appears in Collections:DISSERTAÇÃO - Engenharia Elétrica

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