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Quantile-based optimization under uncertainties using adaptive Kriging surrogate models

机译:使用自适应Kriging替代模型的不确定性下基于分位数的优化

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摘要

Uncertainties are inherent to real-world systems. Taking them into account is crucial in industrial design problems and this might be achieved through reliability-based design optimization (RBDO) techniques. In this paper, we propose a quantile-based approach to solve RBDO problems. We first transform the safety constraints usually formulated as admissible probabilities of failure into constraints on quantiles of the performance criteria. In this formulation, the quantile level controls the degree of conservatism of the design. Starting with the premise that industrial applications often involve high-fidelity and time-consuming computational models, the proposed approach makes use of Kriging surrogate models (a.k.a. Gaussian process modeling). Thanks to the Kriging variance (a measure of the local accuracy of the surrogate), we derive a procedure with two stages of enrichment of the design of computer experiments (DoE) used to construct the surrogate model. The first stage globally reduces the Kriging epistemic uncertainty and adds points in the vicinity of the limit-state surfaces describing the system performance to be attained. The second stage locally checks, and if necessary, improves the accuracy of the quantiles estimated along the optimization iterations. Applications to three analytical examples and to the optimal design of a car body subsystem (minimal mass under mechanical safety constraints) show the accuracy and the remarkable efficiency brought by the proposed procedure.
机译:不确定性是现实系统固有的。考虑到它们对于工业设计问题至关重要,这可以通过基于可靠性的设计优化(RBDO)技术来实现。在本文中,我们提出了一种基于分位数的方法来解决RBDO问题。我们首先将通常被表述为可接受的失效概率的安全约束转换为对性能标准的分位数的约束。在此公式中,分位数级别控制着设计的保守程度。从工业应用通常涉及高保真和费时的计算模型开始,所提出的方法利用了克里格代理模型(又称高斯过程建模)。多亏了克里格(Kriging)方差(一种衡量替代物局部精度的方法),我们得出了一个包含两个阶段的过程,以丰富用于构建替代物模型的计算机实验(DoE)的设计。第一阶段总体上降低了克里格知识的不确定性,并在极限状态表面附近添加了描述要获得的系统性能的点。第二阶段局部检查,并在必要时提高沿优化迭代估算的分位数的准确性。在三个分析示例和车身子系统的优化设计(在机械安全约束下的最小质量)的应用中,显示了所提出程序带来的准确性和显着效率。

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