利用多模态策略控制遗传算法的多样性

Henry Alberto Hernández Martínez, Lely Adriana Luengas Contreras
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引用次数: 0

摘要

优化过程是一种系统地提出比之前使用的解决方案更好的解决方案的过程。优化算法被用来寻找最优或接近最优的解决方案,评估设计权衡,评估控制系统,在数据中找到模式,并找到数学函数的最优值(局部或全局)。遗传算法是其中一种优化技术。通过这种方式,一种启发式搜索受到查尔斯·达尔文自然进化论的启发。该算法反映了自然选择的过程,即选择最适合的个体进行繁殖,以产生下一代的后代,这是模仿类似达尔文自然选择行为的种群算法。考虑到这些问题,本文展示了设计的遗传算法的性能,该算法允许从种群多样性控制中找到函数内的几个最小值。为了进行测试,使用了具有四个不同函数的算法,其特点是具有几个相同值的最小值。将该策略与传统的遗传算法进行了比较,结果表明传统的遗传算法只能找到函数的一些最小值,有时只能找到一个最小值,而该策略能找到大多数最小值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control of diversity in genetic algorithms using multimodal strategies
An optimization process is a kind of process that systematically comes up with solutions that are better than a previous solution used before. Optimization algorithms are used to find solutions which are optimal or near-optimal with respect to some goals, to evaluate design tradeoffs, to assess control systems, to find patterns in data, and to find the optimum values (local or global) of mathematical functions. A genetic algorithm is one of the optimization techniques. In this way, a heuristic search that is inspired by Charles Darwin’s theory of natural evolution. This algorithm reflects the process of natural selection where the fittest individuals are selected for reproduction in order to produce offspring of the next generation which are population algorithms that emulate behavior similar to Darwinian natural selection. Taking into account these issues, this article shows the performance of a genetic algorithm designed, which allows to find several minimums within a function from the control of population diversity. To perform the tests, the algorithm with four different functions was used, with the particularity of having several minima with the same value. Proposed strategy was compared with a conventional genetic algorithm, the result was the conventional one can only find some of the minimums of the function and sometimes only one, while the proposal finds most of the minimums
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