作者
Harish Sharma, Jagdish Chand Bansal, KV Arya
发表日期
2012/12
期刊
Memetic Computing
卷号
4
期号
4
页码范围
303-316
出版商
Springer-Verlag
简介
Differential Evolution (DE) is a well known and simple population based probabilistic approach for global optimization. It has reportedly outperformed a few Evolutionary Algorithms and other search heuristics like Particle Swarm Optimization when tested over both benchmark and real world problems. But, DE, like other probabilistic optimization algorithms, sometimes exhibits premature convergence and stagnates at suboptimal point. In order to avoid stagnation behavior while maintaining a good convergence speed, a new position update process is introduced, named fitness based position update process in DE. In the proposed strategy, position of the solutions are updated in two phases. In the first phase all the solutions update their positions using the basic DE and in the second phase, all the solutions update their positions based on their fitness. In this way, a better solution participates more times in …
引用总数
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学术搜索中的文章
H Sharma, JC Bansal, KV Arya - Memetic Computing, 2012