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A NEW ROBUSTNESS METRIC FOR ROBUST DESIGN OPTIMIZATION UNDER TIME- AND SPACE-DEPENDENT UNCERTAINTY THROUGH METAMODELING

机译:通过建模实现时空依赖不确定性的鲁棒设计优化的新鲁棒性度量

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Product performance varies with respect to time and space in many engineering applications. This work discusses how to measure and evaluate the robustness of a product or component when its quality characteristics are functions of random variables, random fields, temporal variables, and spatial variables. At first, the existing time-dependent robustness metric is extended to the present time- and space-dependent problem. The robustness metric is derived using the extreme value of the quality characteristics with respect to temporal and spatial variables for the nominal-the-better type quality characteristics. Then a metamodel-based numerical procedure is developed to evaluate the new robustness metric. The procedure employs a Gaussian Process regression method to estimate the expected quality loss that involves the extreme quality characteristics. The expected quality loss is obtained directly during the regression model building process. Three examples are used to demonstrate the robustness analysis method. The proposed method can be used for robustness assessment during robust design optimization under time- and space-dependent uncertainty.
机译:在许多工程应用中,产品性能会随时间和空间而变化。这项工作讨论了当产品或组件的质量特性是随机变量,随机字段,时间变量和空间变量的函数时,如何测量和评估产品或组件的健壮性。首先,将现有的时间相关的鲁棒性度量扩展到当前的时间和空间相关的问题。使用相对于名义上更好的质量特性的时间和空间变量的质量特性的极值来得出鲁棒性度量。然后,开发了一种基于元模型的数值程序来评估新的鲁棒性指标。该过程采用高斯过程回归方法来估计涉及极端质量特征的预期质量损失。预期的质量损失是在回归模型构建过程中直接获得的。使用三个示例来说明鲁棒性分析方法。所提出的方法可用于在时间和空间相关的不确定性下的鲁棒性设计优化过程中的鲁棒性评估。

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