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UNCERTAINTY-BASED MULTIDISCIPLINARY DESIGN OPTIMIZATION FOR FEEDBACK-COUPLED SYSTEMS UNDER BOTH PARAMETRIC AND METAMODELING UNCERTAINTIES

机译:基于不确定性的多学科设计优化,用于参数和元模型不确定性下的反馈耦合系统

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Uncertainty-based multidisciplinary design optimization (UMDO) is an effective methodology to deal with uncertainties in the engineering system design. In order to shorten the design cycle and improve the design efficiency, the time-consuming computer simulation models are often replaced by metamodels, which consequently introduces metamodeling uncertainty into the UMDO procedure. The optimal solutions may deviate from the true results or even become infeasible if the metamodeling uncertainty is neglected. However, it is difficult to quantify and propagate the metamodeling uncertainty, especially in the UMDO process with feedback-coupled systems since the interdisciplinary consistency needs to be satisfied. In this paper, a new approach is proposed to solve the UMDO problem for the feedback-coupled systems under both parametric and metamodeling uncertainties. This approach adopts the decoupled formulation and it applies the Kriging technique to quantify the metamodeling uncertainty. The polynomial chaos expansion (PCE) technique is applied to propagate the two types of uncertainties and represent the interdisciplinary consistency constraints. In the optimization approach, the proposed method uses the iterative construction of PCE models for response means and variances to satisfy the multidisciplinary consistency at the optimal solution. The proposed approach is verified by a mathematical example and applied to the fire satellite design. The results demonstrate the proposed approach can solve the UMDO problem for coupled systems accurately and efficiently.
机译:基于不确定性的多学科设计优化(UMDO)是处理工程系统设计中的不确定性的有效方法。为了缩短设计周期并提高设计效率,耗时的计算机仿真模型通常由元模型取代,从而引入了Metamodeling的不确定性进入UMDO程序。如果忽略了元素不确定性,最佳解决方案可能偏离真实结果,甚至变得不可行。然而,难以量化和传播元素不确定性,特别是在UMDO过程中,由于需要满足跨界一致性。在本文中,提出了一种新方法来解决参数和元模型不确定性下的反馈耦合系统的UMDO问题。该方法采用分离的制剂,并应用Kriging技术来量化元素不确定性。应用多项式混沌扩展(PCE)技术以传播两种类型的不确定性并表示跨学科一致性约束。在优化方法中,所提出的方法使用PCE模型的迭代构造,用于响应装置和差异来满足最佳解决方案的多学科一致性。所提出的方法是由数学例子验证并应用于消防卫星设计。结果证明了所提出的方法可以精确且有效地解决耦合系统的UMDO问题。

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