基于代理辅助鲁棒距离度量的鲁棒多目标进化算法

Robust Multiobjective Evolutionary Algorithm Based on Surrogate-Assisted Robust Distance Metric

IEEE Transactions on Cybernetics · 2026
被引 0
ABS 3

中文导读

提出一种基于径向基函数代理模型和鲁棒距离度量的多目标进化算法,通过减少函数评估次数和引入鲁棒性目标,在标准测试和实际问题上取得更优的鲁棒最优解。

Abstract

Robust multiobjective evolutionary algorithms (RMOEAs) aim to obtain robust optimal solutions. However, traditional RMOEAs typically require evaluating a large number of sampling points, which is often impractical in real-world applications due to the high computational cost. In this article, we propose a robust multiobjective evolutionary algorithm based on surrogate-assisted (RMOEA-SA), which incorporates a radial basis function (RBF) surrogate model and a novel robust distance metric (RDM). The proposed algorithm employs the RBF surrogate model to approximate the fitness values of sampling points, thereby significantly reducing the number of function evaluations during the robust optimization process. Furthermore, an RDM assisted by the RBF surrogate model is introduced to measure the robustness of solutions. Besides, the RDM value of each solution is treated as an additional objective, expanding the original objective space, and selection is conducted in this augmented space to achieve a desirable trade-off between robustness and optimality. The experimental results on standard benchmark functions and two real-world application problems demonstrate the superior feasibility and effectiveness of the proposed method compared with several existing algorithms.

多目标优化进化算法代理模型鲁棒优化径向基函数