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Trabalhos Futuros

No documento Rodrigo Lisbôa Pereira - PPGEE - UFPA (páginas 125-140)

Tabela 5.1. Comparação das características presentes nas contribuições dos trabalhos de Teixeira (2012) e Pereira et al. (2020).

Características TEIXEIRA (2012) PEREIRA et al. (2020)

Utiliza o fenótipo Sim Sim

Utiliza o jogo DP Sim Sim

Utiliza o jogo auto adaptativo Não Sim

Utiliza o jogo aplicado na seleção Sim Sim

Utiliza o jogo aplicado no cruzamento Não Sim

Utiliza sistemas fuzzy Sim Não

Utiliza a simulação para aferir resultados Sim Sim

Utiliza a computação paralela Não Sim

Realiza o controle da diversidade Não Sim

de outras prováveis bibliotecas que podem ser empregadas no ambiente paralelo, de modo a ampliar os estudos na área dos Métodos Paralelos e Distribuídos Inspirados na Evolução.

4. Por fim, a adaptação do modelo de TJ descrito nesta tese para outras meta- heurísticas, mais especificamente em algoritmos baseados inteligência de enxames e evolução diferencial, consiste em mais outra possibilidade de se expandir os estudos indicados nesta tese.

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