渡线
遗传算法
锦标赛选拔
选择(遗传算法)
计算机科学
基于群体的增量学习
文化算法
人口
染色体
质量控制与遗传算法
算法
突变
数学优化
适应度比例选择
遗传代表性
元优化
过程(计算)
人工智能
数学
机器学习
适应度函数
生物
遗传学
人口学
社会学
基因
操作系统
作者
Annu Lambora,Kunal Gupta,Kriti Chopra
标识
DOI:10.1109/comitcon.2019.8862255
摘要
Genetic Algorithm (GA) may be attributed as method for optimizing the search tool for difficult problems based on genetics selection principle. In additions to Optimization it also serves the purpose of machine learning and for Research and development. It is analogous to biology for chromosome generation with variables such as selection, crossover and mutation together constituting genetic operations which would be applicable on a random population initially. GA aims to yield solutions for the consecutive generations. The extent of success in individual production is directly in proportion to fitness of solution which is represented by it, thereby ensuring that quality in successive generations will be better. The process is concluded once an GA is most suitable for the issues that need optimization associated with some computable system.. John Holland may be regarded as funding father of original genetic algorithm and is attributed to year 1970's as funding date. Additionally a random search method represented by Charles Darwin for a defined search space in order to effetely solve a problem. In this paper, what is genetic algorithm and its basic workflow is discussed how a genetic algorithm work and what are the process is included in this is also discussed. Further, the features and application of genetic algorithm are mentioned in the paper.
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