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Evolutionary Multiobjective Optimization Based on Gaussian Process Modeling

机译:基于高斯过程建模的进化多目标优化

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This paper presents a summary of the doctoral dissertation of the author, which addresses the task of evolutionary multiobjective optimization using surrogate models. The main contributions are done for the optimization problems, where solutions are presented with uncertainty. To compare solutions under uncertainty and improve the optimization results the new relations for comparing solutions under uncertainty are defined. These relations reduce the possibility of incorrect comparisons due to the inaccurate approximations. The relations under uncertainty are then used in the new surrogate-model-based multiobjective evolutionary algorithm called GP-DEMO. The algorithm is thoroughly tested on benchmark and real-world problems and the results show that GP-DEMO, in comparison to other multiobjective evolutionary algorithms, produces comparable results while requiring fewer exact evaluations of the original objective functions.
机译:本文介绍了作者的博士学位论文的摘要,该文章解决了使用替代模型进行演化多目标优化的任务。对于优化问题做出了主要贡献,优化问题中的解决方案具有不确定性。为了比较不确定性下的解决方案并改善优化结果,定义了用于比较不确定性下的解决方案的新关系。这些关系减少了由于不正确的近似而导致不正确比较的可能性。然后将不确定性下的关系用于新的基于代理模型的多目标进化算法GP-DEMO。该算法在基准问题和实际问题上进行了彻底的测试,结果表明,与其他多目标进化算法相比,GP-DEMO产生的结果可比,而对原始目标函数的精确评估却需要更少的时间。

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