Corpus ID: 54758540

Impact analysis of crossovers in a multi-objective evolutionary algorithm

@inproceedings{Mashwani2015ImpactAO,
  title={Impact analysis of crossovers in a multi-objective evolutionary algorithm},
  author={Wali Khan Mashwani and Abdellah Salhi and Matthew Jan and Rashida Adeeb Khanum and Muhammad Sulaiman},
  year={2015}
}
Multi-objective optimization has become mainstream because several real-world problems are naturally posed as a Multi-objective optimization problems (MOPs) in all fields of engineering and science. Usually MOPs consist of more than two conflicting objective functions and that demand trade-off solutions. Multi-objective evolutionary algorithms (MOEAs) are extremely useful and well-suited for solving MOPs due to population based nature. MOEAs evolve its population of solutions in a natural way… Expand

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