研究目的
To address the problem of preserving diversity in high-dimensional objective space in decomposition-based multiobjective evolutionary algorithms (MOEAs) by exploiting the perpendicular distance from the solution to the weight vector in the objective space.
研究成果
The proposed algorithms, MOEA/D-DU and EFR-RR, are generally more effective than their predecessors in balancing convergence and diversity in many-objective optimization. They are also competitive against other existing algorithms, demonstrating the potential of exploiting the perpendicular distance from the solution to the weight vector in the objective space for maintaining diversity.
研究不足
The study focuses on decomposition-based MOEAs and their performance in many-objective optimization problems. The effectiveness of the proposed methods may vary depending on the problem characteristics and the dimensionality of the objective space.