Multi-Objective Optimization Using Evolutionary …
applicability. For solving single-objective optimization problems, particularly in nding a single optimal solution, the use of a population of solutions may sound redundant, in solving multi-objective optimization problems an EO procedure is a perfect choice [1]. The multi-objective optimization problems, by nature,
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