单纯形算法
遗传算法
单纯形
元优化
数学优化
计算机科学
算法
基于群体的增量学习
点(几何)
最优化问题
文化算法
算法设计
数学
线性规划
几何学
作者
Nicolas Durand,Jean‐Marc Alliot
出处
期刊:Le Centre pour la Communication Scientifique Directe - HAL - Diderot
日期:1999-07-13
被引量:53
摘要
It is usually said that genetic algorithm should be used when nothing else works. In practice, genetic algorithm are very often used for large sized global optimization problems, but are not very efficient for local optimization problems. The Nelder-Mead simplex algorithm has some common characteristics with genetic algorithm, but it can only find a local optimum close to the starting point. In this article, a combined Nelder-Mead Simplex and Genetic algorithm is introduced and tested on classical test functions on which both genetic algorithm or local optimization techniques are not efficient when separately used.
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