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Robust optimization: A kriging-based multi-objective optimization approach

机译:鲁棒优化:基于Kriging的多目标优化方法

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In the robust shape optimization context, the evaluation cost of numerical models is reduced by the use of a response surface. Multi-objective methodologies for robust optimization that consist in simultaneously minimizing the expectation and variance of a function have already been developed to answer to this question. However, efficient estimation in the framework of time-consuming simulation has not been completely explored. In this paper, a robust optimization procedure based on Taylor expansion, kriging prediction and a genetic NSGA-II algorithm is proposed. The two objectives are the Taylor expansion of expectation and variance. The kriging technique is chosen to surrogate the function and its derivatives. Afterwards, NSGA-II is performed on kriging response surfaces or kriging expected improvements to construct a Pareto front. One point or a batch of points is chosen carefully to enrich the learning set of the model. When the budget is reached the non-dominated points provide designs that make compromises between optimization and robustness. Seven relevant strategies based on this main procedure are detailed and compared in two test functions (2D and 6D). In each case, the results are compared when the derivatives are observed and when they are not. The procedure is also applied to an industrial case study where the objective is to optimize the shape of a motor fan.
机译:在鲁棒形状优化上下文中,通过使用响应表面减少了数值模型的评估成本。用于稳健优化的多目标方法,该方法同时最大限度地减少函数的期望和方差已经开发出来回答这个问题。但是,耗时仿真框架中的有效估计尚未完全探索。本文提出了一种基于泰勒膨胀,Kriging预测和遗传NSGA-II算法的鲁棒优化过程。两种目标是泰勒的预期和方差的扩大。选择Kriging技术以代替功能及其衍生物。然后,在Kriging响应表面或Kriging预期改进上进行NSGA-II以构建帕累托前部。仔细选择一点或一批点来丰富模型的学习集。当达到预算时,非主导点提供了在优化和稳健性之间妥协的设计。根据这一主要程序的七种相关策略在两个测试功能(2D和6D)中进行了详细和比较。在每种情况下,当观察到衍生物并且当它们不是时比较结果。该程序也应用于工业壳体研究,其中目的是优化电动机风扇的形状。

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