Application of Genetic Algorithm in Common Optimization Problems

N. Topuria, O. Kikvidze
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引用次数: 0

Abstract

Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used nowadays. Genetic Algorithm belongs to a group of stochastic biomimicry algorithms, it allows us to achieve optimal or near-optimal results in large optimization problems in exceptionally short time (compared to standard optimization methods). Major advantage of Genetic Algorithm is the ability to fuse genes, to mutate and do selection based on fitness parameter. These methods protect us from being trapped in local optima (Most of deterministic algorithms are prone to getting stuck on local optima). In this paper we experimentally show the upper hand of Genetic Algorithms compared to other traditional optimization methods by solving complex optimization problem.
遗传算法在常见优化问题中的应用
非确定性算法在求解多变量优化问题中得到了广泛的应用。遗传算法属于一组随机仿生学算法,它允许我们在极短的时间内(与标准优化方法相比)在大型优化问题中获得最优或接近最优的结果。遗传算法的主要优点是能够进行基因融合、突变和基于适应度参数的选择。这些方法可以防止我们陷入局部最优状态(大多数确定性算法都容易陷入局部最优状态)。本文通过解决复杂的优化问题,通过实验证明了遗传算法相对于传统优化方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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