Optimizing the reliability and the robustness of a design is important but often unaffordable due to high sample requirements. Surrogate models based on statistical and machine learning methods are used to increase the sample efficiency. However, for higher dimensional or multi-modal systems, surrogate models may also require a large amount of samples to achieve good results. We propose a sequential sampling strategy for the surrogate based solution of multi-objective reliability based robust design optimization problems. Proposed local Latin hypercube refinement (LoLHR) strategy is model-agnostic and can be combined with any surrogate model because there is no free lunch but possibly a budget one. The proposed method is compared to stationary sampling as well as other proposed strategies from the literature. Gaussian process and support vector regression are both used as surrogate models. Empirical evidence is presented, showing that LoLHR achieves on average better results compared to other surrogate based strategies on the tested examples.
翻译:优化设计可靠性和稳健性十分重要,但由于抽样要求高,往往负担不起; 使用基于统计和机器学习方法的代用模型来提高抽样效率; 然而,对于较高维度或多模式系统,代用模型也可能需要大量样品才能取得良好结果; 我们为基于多目标可靠性的基于多目标可靠度的稳健设计优化问题的代用解决方案提出一个顺序抽样战略; 拟议的拉丁超立方体精细化(LOLHR)战略是示范性,可与任何代用模型相结合,因为没有免费午餐,但可能没有预算。 拟议的方法与固定抽样以及文献中的其他拟议战略进行比较。 高氏过程和支持矢量回归都用作代用模型。 提供了经验性证据,表明LOLHR取得的平均结果优于根据所测试的实例制定的其他代用战略。