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首页> 外文期刊>Journal of Global Optimization >An efficient multi-objective PSO algorithm assisted by Kriging metamodel for expensive black-box problems
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An efficient multi-objective PSO algorithm assisted by Kriging metamodel for expensive black-box problems

机译:Kriging元模型辅助的高效多目标PSO算法,用于解决昂贵的黑箱问题

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摘要

The huge computational overhead is the main challenge in the application of community based optimization methods, such as multi-objective particle swarm optimization andmulti-objective genetic algorithm, to deal with themulti-objective optimization involving costly simulations. This paper proposes a Kriging metamodel assisted multi-objective particle swarm optimization method to solve this kind of expensively black-box multi-objective optimization problems. On the basis of crowding distance based multi-objective particle swarm optimization algorithm, the new proposed method constructs Kriging metamodel for each expensive objective function adaptively, and then the non-dominated solutions of the metamodels are utilized to guide the update of particle population. To reduce the computational cost, the generalized expected improvements of each particle predicted by metamodels are presented to determine which particles need to perform actual function evaluations. The suggested method is tested on 12 benchmark functions and compared with the original crowding distance based multi-objective particle swarm optimization algorithm and non-dominated sorting genetic algorithm-II algorithm. The test results show that the application of Kriging metamodel improves the search ability and reduces the number of evaluations. Additionally, the new proposed method is applied to the optimal design of a cycloid gear pump and achieves desirable results.
机译:庞大的计算开销是应用基于社区的优化方法(例如多目标粒子群优化和多目标遗传算法)来应对涉及昂贵仿真的多目标优化的主要挑战。提出了一种克里格元模型辅助的多目标粒子群优化方法来解决这类昂贵的黑箱多目标优化问题。在基于拥挤距离的多目标粒子群优化算法的基础上,新方法针对每个昂贵的目标函数自适应地构造了克里格元模型,然后利用元模型的非支配解来指导粒子群的更新。为了减少计算成本,提出了由元模型预测的每个粒子的广义预期改进,以确定哪些粒子需要执行实际功能评估。该方法在12个基准函数上进行了测试,并与基于原始拥挤距离的多目标粒子群算法和非支配排序遗传算法-II算法进行了比较。测试结果表明,Kriging元模型的应用提高了搜索能力,并减少了评估次数。此外,新提出的方法被应用于摆线齿轮泵的优化设计,并获得了理想的结果。

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