We present an algorithm for multi-objective optimization of computationally expensive problems. The proposed algorithm is based on solving a set of surrogate problems defined by models of the real one, so that only solutions estimated to be approximately Pareto-optimal are evaluated using the real expensive functions. Aside of the search for solutions, our algorithm also performs a meta-search for optimal surrogate models and navigation strategies for the optimization landscape, therefore adapting the search strategy for solutions to the problem as new information about it is obtained. The competitiveness of our approach is demonstrated by an experimental comparison with one state-of-the-art surrogate-assisted evolutionary algorithm on a set of benchmark problems.
翻译:我们提出了多客观优化计算昂贵问题的算法。 提议的算法基于解决一系列由实际模型模型界定的替代问题,这样,只有估计约为Pareto-最优化的解决方案才用真正昂贵的功能进行评估。 除了寻找解决方案之外,我们的算法还进行元研究,寻找最佳替代模型和优化景观导航战略,因此随着获得关于优化的新信息,调整搜索战略,以解决问题。我们方法的竞争力表现在对一套基准问题进行实验性比较上。