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Parallel genetic algorithm for search and constrained multi-objective optimization

Lucas A. Wilson, Michelle Moore, J.P. Picarazzi, S. Miquel

发表年份
2004
引用次数
10

摘要

Summary form only given. Parallel genetic algorithm for search and constrained multiobjective optimization introduces the design and complexity analysis of a parallel genetic algorithm to generate a "best" path for a robot arm to follow, given a starting position and a goal in three dimensional space. Path generation takes into account any obstacles near the arm. This algorithm uses multiple optimization criteria, independent cross-pollinating populations, and handles multiple hard constraints. Individuals in the population consist of multiple chromosomes. The complexity of the algorithm is the number of generations processed times O(N ) where N is the total number of individuals used for path generation on all of the optimizations.

关键词

Computer sciencePath (computing)Genetic algorithmAlgorithmMathematical optimizationPopulationMeta-optimizationMetaheuristicMathematics

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