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A Multifractal-Guided Multilevel Surrogate Model-Based Evolutionary Algorithm for Expensive Multiobjective Problems

机译:基于多分形指导的多层次代理模型的昂贵多目标问题进化算法

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摘要

In applied engineering, there are tremendous optimization problems which are multiobjective problems. Meanwhile, a number of them require large amount of time to evaluate their expensive cost function during optimization procedures. This kind of problems can be either financially expensive due to significant computational resources being required or time expensive due to numerous computational complexity. Aimingto this kind of problems, this paper proposed a multilevel surrogate model-based evolutionary algorithm. The proposed method employs DACE modeling method at the beginning to obtain a global trend in the decision domain. When more and more samples are involved and the sample distribution presents a trend or a manifold, the SVR model is utilized as a second-level surrogate model to achieve a better local search. The model transition is determined by the multifractal analysis on the solution set. Experimental results on ZDT and DTLZ standard test cases demonstrate that the time for EGO modeling can be reduced, and the accuracy can be better balanced by comparing to existing SVR and EGO methods.
机译:在应用工程中,存在巨大的优化问题,这是多目标问题。同时,它们中的许多需要大量时间才能在优化过程中评估其昂贵的成本函数。由于需要大量的计算资源,此类问题可能在财务上昂贵,或者由于大量的计算复杂性而在时间上很昂贵。针对此类问题,本文提出了一种基于多级代理模型的进化算法。该方法从一开始就采用DACE建模方法来获得决策域的全局趋势。当涉及到越来越多的样本并且样本分布呈现趋势或流形时,SVR模型将用作第二级替代模型,以实现更好的本地搜索。模型转换是通过对解集进行多重分形分析来确定的。在ZDT和DTLZ标准测试用例上的实验结果表明,与现有的SVR和EGO方法相比,可以减少EGO建模的时间,并且可以更好地平衡精度。

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