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Além do que foi realizado e apresentado anteriormente, existem outras atividades de pesquisa que podem ser executadas com a conclusão desta tese. Dentre as principais tem-se:

Desenvolvimento de uma versão multiobjetivo baseada em PSO e Iterated Local

Search (ILS) para aplicação no problema de despacho de caminhões em minas a céu

aberto. Avaliar o desempenho do hMOEA frente a estas duas implementações;

Aplicar os algoritmos propostos em MOPs com um número maior de objetivos e

avaliar o desempenho de cada implementação neste contexto;

Introduzir conhecimento sobre o problema nos atuais operadores propostos no

trabalho, bem como implementar novos operadores que explorem particularidades do problema levantado.

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