进化算法
数学优化
多目标优化
替代模型
趋同(经济学)
维数(图论)
计算机科学
比例(比率)
进化计算
集合(抽象数据类型)
数学
算法
物理
量子力学
纯数学
经济
程序设计语言
经济增长
作者
Haoran Gu,Handing Wang,Cheng He,Bo Yuan,Yaochu Jin
摘要
Abstract Recently, computationally intensive multiobjective optimization problems have been efficiently solved by surrogate-assisted multiobjective evolutionary algorithms. However, most of those algorithms can handle no more than 200 decision variables. As the number of decision variables increases further, unreliable surrogate models will result in a dramatic deterioration of their performance, which makes large-scale expensive multiobjective optimization challenging. To address this challenge, we develop a large-scale multiobjective evolutionary algorithm guided by low-dimensional surrogate models of scalarization functions. The proposed algorithm (termed LDS-AF) reduces the dimension of the original decision space based on principal component analysis, and then directly approximates the scalarization functions in a decomposition-based multiobjective evolutionary algorithm. With the help of a two-stage modeling strategy and convergence control strategy, LDS-AF can keep a good balance between convergence and diversity, and achieve a promising performance without being trapped in a local optimum prematurely. The experimental results on a set of test instances have demonstrated its superiority over eight state-of-the-art algorithms on multiobjective optimization problems with up to 1,000 decision variables using only 500 real function evaluations.
科研通智能强力驱动
Strongly Powered by AbleSci AI