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scientific edition of Bauman MSTU

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Bauman Moscow State Technical University.   El № FS 77 - 48211.   ISSN 1994-0408

77-30569/363023 Review: population methods of Pareto set approximation in multi-objective optimization problem

# 04, April 2012
DOI: 10.7463/0412.0363023
Article file: Митина_P.pdf (650.08Kb)
authors: A.P. Karpenko, A.S. Semenikhin, E.V. Mitina

References

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