Robust Optimization With Mixed Interval and Probabilistic Parameter Uncertainties, Model Uncertainty, and Metamodeling Uncertainty

Yanjun Zhang, Tingting Xia, Mian Li
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Abstract

Various types of uncertainties, such as parameter uncertainty, model uncertainty, metamodeling uncertainty may lead to low robustness. Parameter uncertainty can be either epistemic or aleatory in physical systems, which have been widely represented by intervals and probability distributions respectively. Model uncertainty is formally defined as the difference between the true value of the real-world process and the code output of the simulation model at the same value of inputs. Additionally, metamodeling uncertainty is introduced due to the usage of metamodels. To reduce the effects of uncertainties, robust optimization (RO) algorithms have been developed to obtain solutions being not only optimal but also less sensitive to uncertainties. Based on how parameter uncertainty is modeled, there are two categories of RO approaches: interval-based and probability-based. In real-world engineering problems, both interval and probabilistic parameter uncertainties are likely to exist simultaneously in a single problem. However, few works have considered mixed interval and probabilistic parameter uncertainties together with other types of uncertainties. In this work, a general RO framework is proposed to deal with mixed interval and probabilistic parameter uncertainties, model uncertainty, and metamodeling uncertainty simultaneously in design optimization problems using the intervals-of-statistics approaches. The consideration of multiple types of uncertainties will improve the robustness of optimal designs and reduce the risk of inappropriate decision-making, low robustness and low reliability in engineering design. Two test examples are utilized to demonstrate the applicability and effectiveness of the proposed RO approach.
具有混合区间和概率参数不确定性、模型不确定性和元建模不确定性的鲁棒优化
各种类型的不确定性,如参数不确定性、模型不确定性、元建模不确定性等,都可能导致鲁棒性较低。在物理系统中,参数的不确定性可以是认知性的,也可以是偶然性的,它们被广泛地用区间分布和概率分布来表示。模型不确定性的正式定义是,在相同的输入值下,实际过程的真实值与仿真模型的代码输出之间的差值。此外,由于元模型的使用,引入了元建模的不确定性。为了减少不确定性的影响,研究人员开发了鲁棒优化算法,以获得既最优又对不确定性不敏感的解。根据参数不确定性的建模方式,可分为基于区间和基于概率两类RO方法。在实际工程问题中,区间参数不确定性和概率参数不确定性可能同时存在于同一个问题中。然而,很少有研究将区间不确定性和概率参数不确定性与其他类型的不确定性结合起来考虑。在这项工作中,提出了一个通用的RO框架,以处理混合区间和概率参数不确定性,模型不确定性和元建模不确定性,同时在设计优化问题中使用统计区间方法。多类型不确定性的考虑将提高优化设计的鲁棒性,降低工程设计中决策不当、鲁棒性低、可靠性低的风险。通过两个测试实例验证了所提出的RO方法的适用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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