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GP-DEMO: Differential Evolution for Multiobjective Optimization based on Gaussian Process models

机译:GP-DEMO:基于高斯过程模型的多目标优化的差分进化

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This paper proposes a novel surrogate-model-based multiobjective evolutionary algorithm called Differential Evolution for Multiobjective Optimization based on Gaussian Process models (GP-DEMO). The algorithm is based on the newly defined relations for comparing solutions under uncertainty. These relations minimize the possibility of wrongly performed comparisons of solutions due to inaccurate surrogate model approximations. The GP-DEMO algorithm was tested on several benchmark problems and two computationally expensive real-world problems. To be able to assess the results we compared them with another surrogate-model-based algorithm called Generational Evolution Control (GEC) and with the Differential Evolution for Multiobjective Optimization (DEMO). The quality of the results obtained with GP-DEMO was similar to the results obtained with DEMO, but with significantly fewer exactly evaluated solutions during the optimization process. The quality of the results obtained with GEC was lower compared to the quality gained with GP-DEMO and DEMO, mainly due to wrongly performed comparisons of the inaccurately approximated solutions. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的基于代理模型的多目标进化算法,该算法基于高斯过程模型(GP-DEMO),用于多目标优化。该算法基于新定义的关系,用于比较不确定性下的解。这些关系将由于不正确的替代模型逼近而导致错误执行解决方案比较的可能性降到最低。 GP-DEMO算法已针对多个基准问题和两个计算量大的实际问题进行了测试。为了能够评估结果,我们将它们与另一种基于代理模型的算法称为世代演化控制(GEC)和差分演化多目标优化(DEMO)进行了比较。 GP-DEMO获得的结果的质量与DEMO获得的结果相似,但在优化过程中经过精确评估的解决方案要少得多。与使用GP-DEMO和DEMO获得的质量相比,使用GEC获得的结果的质量较低,这主要是由于错误地比较了不精确近似的解。 (C)2014 Elsevier B.V.保留所有权利。

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