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A NEW OPTIMIZATION ALGORITHM BASED ON THE PRINCIPLE OF EVOLUTION 被引量:2

A NEW OPTIMIZATION ALGORITHM BASED ON THE PRINCIPLE OF EVOLUTION
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摘要 A new genetic algorithm is proposed for the optimization problem of real-valued variable functions. A new robust and adaptive fitness scaling is presented by introducing the median of the population in exponential transformation. For float-point represented chromosomes, crossover and mutation operators are given. Convergence of the algorithm is proved. The performance is tested by two generally used functions. Hybrid algorithm which takes the BP algorithm as a mutation operator is used to train a neural network for image recognition. Experimental results show that the proposed algorithm is an efficient global optimization algorithm. A new genetic algorithm is proposed for the optimization problem of real-valued variable functions. A new robust and adaptive fitness scaling is presented by introducing the median of the population in exponential transformation. For float-point represented chromosomes, crossover and mutation operators are given. Convergence of the algorithm is proved. The performance is tested by two generally used functions. Hybrid algorithm which takes the BP algorithm as a mutation operator is used to train a neural network for image recognition. Experimental results show that the proposed algorithm is an efficient global optimization algorithm.
出处 《Journal of Electronics(China)》 1998年第3期248-253,共6页 电子科学学刊(英文版)
基金 Supported by the National Natural Science Foundation
关键词 GENETIC algorithm CROSSOVER and MUTATION OPERATORS Global optimization Genetic algorithm Crossover and mutation operators Global optimization
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