计算机科学
约束(计算机辅助设计)
多群优化
数学优化
领域(数学)
人口
粒子群优化
最优化问题
多目标优化
工程优化
元启发式
进化算法
进化计算
连续优化
管理科学
机器学习
算法
数学
工程类
纯数学
人口学
社会学
几何学
作者
Iman Rahimi,Amir H. Gandomi,Fang Chen,Efrén Mezura‐Montes
标识
DOI:10.1007/s11831-022-09859-9
摘要
Abstract Most real-world problems involve some type of optimization problems that are often constrained. Numerous researchers have investigated several techniques to deal with constrained single-objective and multi-objective evolutionary optimization in many fields, including theory and application. This presented study provides a novel analysis of scholarly literature on constraint-handling techniques for single-objective and multi-objective population-based algorithms according to the most relevant journals and articles. As a contribution to this study, the paper reviews the main ideas of the most state-of-the-art constraint handling techniques in population-based optimization, and then the study addresses the bibliometric analysis, with a focus on multi-objective, in the field. The extracted papers include research articles, reviews, book/book chapters, and conference papers published between 2000 and 2021 for analysis. The results indicate that the constraint-handling techniques for multi-objective optimization have received much less attention compared with single-objective optimization. The most promising algorithms for such optimization were determined to be genetic algorithms, differential evolutionary algorithms, and particle swarm intelligence. Additionally, “Engineering,” “Computer Science,” and “ Mathematics” were identified as the top three research fields in which future research work is anticipated to increase.
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