论文标题

中等规模的昂贵多目标优化问题的替代辅助进化算法

Surrogate Assisted Evolutionary Algorithm for Medium Scale Expensive Multi-Objective Optimisation Problems

论文作者

Ruan, Xiaoran, Li, Ke, Derbel, Bilel, Liefooghe, Arnaud

论文摘要

建立目标函数的替代模型已证明可以有效地帮助进化算法(EAS)解决现实世界中的复杂优化问题,该问题涉及计算上昂贵的数值模拟或昂贵的物理实验。但是,它们的有效性主要集中在少于10个决策变量的小规模问题上。替代辅助EAS(SAEAS)的可伸缩性尚未得到很好的研究。在本文中,我们提出了一个高斯工艺替代模型,辅助EA解决了中等规模的昂贵的多目标优化问题,最多有50个决策变量。我们提议的SAEA有三个独特的特征。首先,我们仅在替代模型构建中使用所有决策变量,而仅使用这些相关的变量来为每个目标函数构建替代模型。其次,原始的多目标优化问题不是直接优化替代目标函数,而是根据替代模型转换为新的。最后但并非最不重要的一点是,开发了一种子集选择方法,以选择一些有希望的候选解决方案进行实际的目标函数评估,从而更新培训数据集。与三个最先进的SAEAS相比,我们提出的算法的有效性在基准问题上得到了验证。

Building a surrogate model of an objective function has shown to be effective to assist evolutionary algorithms (EAs) to solve real-world complex optimisation problems which involve either computationally expensive numerical simulations or costly physical experiments. However, their effectiveness mostly focuses on small-scale problems with less than 10 decision variables. The scalability of surrogate assisted EAs (SAEAs) have not been well studied yet. In this paper, we propose a Gaussian process surrogate model assisted EA for medium-scale expensive multi-objective optimisation problems with up to 50 decision variables. There are three distinctive features of our proposed SAEA. First, instead of using all decision variables in surrogate model building, we only use those correlated ones to build the surrogate model for each objective function. Second, rather than directly optimising the surrogate objective functions, the original multi-objective optimisation problem is transformed to a new one based on the surrogate models. Last but not the least, a subset selection method is developed to choose a couple of promising candidate solutions for actual objective function evaluations thus to update the training dataset. The effectiveness of our proposed algorithm is validated on benchmark problems with 10, 20, 50 variables, comparing with three state-of-the-art SAEAs.

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