Constrained Single-Objective Optimization Using Differential Evolution

@article{Zielinski2006ConstrainedSO,
  title={Constrained Single-Objective Optimization Using Differential Evolution},
  author={Karin Zielinski and Rainer Laur},
  journal={2006 IEEE International Conference on Evolutionary Computation},
  year={2006},
  pages={223-230}
}
Differential evolution (DE) is a rather new evolutionary optimization algorithm that has been shown to be fast and simple for unconstrained single-objective optimization problems. In this work DE is employed for the constrained optimization test suite of the special session on constrained real parameter optimization at CEC06. Constraints are handled using a modified selection procedure that does not require additional parameters. For the control parameters of the DE algorithm the best found… CONTINUE READING
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