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Design Optimization of Hierarchically Decomposed Multilevel Systems Under Uncertainty

机译:不确定条件下分层分解多级系统的设计优化

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摘要

This paper presents a methodology for design optimization of hierarchically decomposed systems under uncertainty. We propose an extended, probabilistic version of the deterministic analytical target cascading (ATC) formulation by treating uncertain quantities as random variables and posing probabilistic design constraints. A bottom-to-top coordination strategy is used for the ATC process. Given that first-order approximations may introduce unacceptably large errors, we use a technique based on the advanced mean value method to estimate uncertainty propagation through the multilevel hierarchy of elements that comprise the decomposed system. A simple yet illustrative hierarchical bilevel engine design problem is used to demonstrate the proposed methodology. The results confirm the applicability of the proposed probabilistic ATC formulation and the accuracy of the uncertainty propagation technique.
机译:本文提出了一种不确定条件下分层分解系统设计优化的方法。我们通过将不确定量视为随机变量并提出概率设计约束条件,提出了确定性分析目标级联(ATC)公式的扩展概率版本。自下而上的协调策略用于ATC流程。鉴于一阶近似可能会引入不可接受的大误差,因此我们使用基于高级均值方法的技术来估计不确定度在组成分解系统的元素的多级层次结构中的传播。一个简单但说明性的分层双层引擎设计问题用于演示所提出的方法。结果证实了所提出的概率ATC公式的适用性和不确定性传播技术的准确性。

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