Multiobjective optimization algorithm for solving constrained single objective problems

In this paper, the results for the CEC 2010 Competition and Special Session on Constrained Real-Parameter Optimization using the multiobjective differential evolution algorithm with spherical pruning (sp-MODE) are presented. According to the obtained results, the sp-MODE shows to be able to find feasible solutions in highly constrained search spaces.

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