基于个体间相关性和维度的双学习动态多目标优化方法

Interindividual Correlation and Dimension-Based Dual Learning for Dynamic Multiobjective Optimization

IEEE Transactions on Evolutionary Computation · 2023
被引 30
ABS 4

中文导读

针对动态多目标优化问题,提出一种结合个体间相关性迁移学习和维度学习的方法,通过两种策略互补协作生成新环境初始种群,在14个基准问题上优于四种先进算法。

Abstract

Dynamic multiobjective optimization problems (DMOPs) are characterized by their multiple objectives, constraints, and parameters that may change over time. The challenge in solving DMOPs is how to track the varying Pareto optimal solution sets quickly and accurately. Therefore, an inter-individual correlation and dimension-based dual learning method is proposed in this paper. Two learning strategies, decomposition-based inter-individual correlation transfer learning (DICTL) and dimension-wise learning (DL), are developed to respectively generate one-half of the initial population in the new environment. More specifically, DICTL learns the inter-individual correlation from the final population of the adjacent environment and then transfers it to the new environment, aiming to maintain the diversity and distribution of the predicted population. While DL extracts the changing pattern of dynamic environments from the high-quality solutions of historical environments in the perspective of variable dimension, trying to improve the quality of the population and accelerate the convergence. The designed two learning strategies (DICTL&DL) work complementarily and collaboratively to make the algorithm adapt to dynamic environments better and faster. Comprehensive experiments have been conducted by comparing the proposed method with four state-of-the-art algorithms on 14 benchmark problems. The results demonstrate the superiority of the proposed method.

动态多目标优化迁移学习进化算法机器学习