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ROBUST OPTIMIZATION WITH PARAMETER AND MODEL UNCERTAINTIES USING GAUSSIAN PROCESSES WITH LIMITED SAMPLES

机译:使用有限样本的高斯过程进行参数和模型不确定性的鲁棒优化

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Uncertainty is inevitable in engineering design. The existence of uncertainty may change the optimality and/or the feasibility of the obtained optimal solutions. In simulation-based engineering design, uncertainty could have various types of sources, such as parameter uncertainty, model uncertainty, and other random errors. To deal with uncertainty, robust optimization (RO) algorithms are developed to find solutions which are not only optimal but also robust with respect to uncertainty. Parameter uncertainty has been taken care of by various RO approaches. While model uncertainty has been ignored in majority of existing RO algorithms with the hypothesis that the simulation model used could represent the real physical system perfectly. In the authors' earlier work, a RO framework was proposed to consider both parameter and model uncertainties using the Bayesian approach with Gaussian processes (GP), where metamodeling uncertainty introduced by GP modeling is ignored by assuming the constructed GP model is accurate enough with sufficient training samples. However, infinite samples are impossible for real applications due to prohibitive time and/or computational cost. In this work, a new RO framework is proposed to deal with both parameter and model uncertainties using GP models but only with limited samples. The compound effect of parameter, model, and metamodeling uncertainties is derived with the form of the compound mean and variance to formulate the proposed RO approach. The proposed RO approach will reduce the risk for the obtained robust optimal designs considering parameter and model uncertainties becoming non-optimal and/or infeasible due to insufficiency of samples for GP modeling. Two test examples with different degrees of complexity are utilized to demonstrate the applicability and effectiveness of the proposed approach.
机译:工程设计不可避免地存在不确定性。不确定性的存在可能会改变获得的最优解的最优性和/或可行性。在基于仿真的工程设计中,不确定性可能具有各种类型的来源,例如参数不确定性,模型不确定性和其他随机误差。为了处理不确定性,开发了鲁棒优化(RO)算法,以找到不仅最优而且相对于不确定性也鲁棒的解决方案。各种反渗透方法已经解决了参数不确定性问题。尽管大多数现有RO算法都忽略了模型不确定性,但前提是所使用的仿真模型可以完美地代表真实的物理系统。在作者的早期工作中,提出了一种RO框架,该模型使用带高斯过程(GP)的贝叶斯方法考虑参数和模型的不确定性,在这种情况下,通过假设构造的GP模型足够准确且具有足够的准确性,可以忽略GP建模引入的元建模不确定性。训练样本。但是,由于时间和/或计算成本过高,对于实际应用而言,无限采样是不可能的。在这项工作中,提出了一个新的RO框架,该模型使用GP模型来处理参数和模型不确定性,但只能使用有限的样本。以复合均值和方差的形式导出参数,模型和元建模不确定性的复合效应,从而提出了所提出的RO方法。考虑到由于GP模型样本不足而导致参数和模型不确定性变得不理想和/或不可行,因此所提出的RO方法将降低获得的稳健最优设计的风险。利用两个具有不同复杂程度的测试示例来证明所提出方法的适用性和有效性。

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