A collaborative decomposition-based evolutionary algorithm integrating normal and penalty-based boundary intersection for many-objective optimization
Yu Wu, Jianle Wei, Weiqin Ying, Yanqi Lan, Zhen Cui, Zhenyu Wang

TL;DR
This paper introduces CoDEA, a novel evolutionary algorithm that combines cone and parallel decomposition methods to improve convergence, diversity, and uniformity in many-objective optimization problems.
Contribution
It proposes a collaborative decomposition approach that integrates PBI and NBI methods, with adaptive reference line tuning, to enhance optimization performance.
Findings
CoDEA outperforms several popular algorithms on benchmark tests.
The collaborative decomposition balances convergence, diversity, and uniformity.
Experimental results demonstrate high competitiveness of CoDEA.
Abstract
Decomposition-based evolutionary algorithms have become fairly popular for many-objective optimization in recent years. However, the existing decomposition methods still are quite sensitive to the various shapes of frontiers of many-objective optimization problems (MaOPs). On the one hand, the cone decomposition methods such as the penalty-based boundary intersection (PBI) are incapable of acquiring uniform frontiers for MaOPs with very convex frontiers. On the other hand, the parallel reference lines of the parallel decomposition methods including the normal boundary intersection (NBI) might result in poor diversity because of under-sampling near the boundaries for MaOPs with concave frontiers. In this paper, a collaborative decomposition method is first proposed to integrate the advantages of parallel decomposition and cone decomposition to overcome their respective disadvantages.…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Metaheuristic Optimization Algorithms Research · Optimal Experimental Design Methods
