Proceedings Article10.1115/DETC99/DAC-8576
Multiobjective Optimization by Iterative Genetic Algorithm
Pierre M. Grignon,Georges M. Fadel +1 more
- 12 Sep 1999
- pp 27-37
10
About: This article is published in Design Automation Conference. The article was published on 12 Sep 1999. The article focuses on the topics: Genetic algorithm & Multi-objective optimization.
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Citations
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Evolutionary algorithms for solving multi-objective problems
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- 30 Jun 2002
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- 02 Sep 1998
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Bounded Variables nonlinear Multiple Criteria Optimization using Scatter search
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