Abstract
This paper provides improved genetic algorithm to solve productivity efficiency in Collaborative Manufacture System (CMS) according to its own characteristics.This improved algorithm not only improved coding method but also improved crossover method and mutation method.And the simulation experiment result in CMS validated the productivity efficiency promoted compared with improved and standard genetic algorithm.
Publisher
Trans Tech Publications, Ltd.
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