An interactive surrogate-based method for computationally expensive multiobjective optimisation

JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY(2019)

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摘要
Many disciplines involve computationally expensive multiobjective optimisation problems. Surrogate-based methods are commonly used in the literature to alleviate the computational cost. In this paper, we develop an interactive surrogate-based method called SURROGATE-ASF to solve computationally expensive multiobjective optimisation problems. This method employs preference information of a decision-maker. Numerical results demonstrate that SURROGATE-ASF efficiently provides preferred solutions for a decision-maker. It can handle different types of problems involving for example multimodal objective functions and nonconvex and/or disconnected Pareto frontiers.
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关键词
Multiple criteria decision-making (MCDM),interactive methods,computational cost,black-box functions,metamodeling techniques,achievement scalarising function
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