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EARLY-STAGE UNCERTAINTY: EFFECTS OF ROBUST CONVEX OPTIMIZATION ON DESIGN EXPLORATION

机译:早期不确定性:稳健凸优化对设计探索的影响

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摘要

Engineers design for an inherently uncertain world. In the early stages of design processes, they commonly account for such uncertainty either by manually choosing a specific worst-case and multiplying uncertain parameters with safety factors or by using Monte Carlo simulations to estimate the probabilistic boundaries in which their design is feasible. The safety factors of this first practice are determined by industry and organizational standards, providing a limited account of uncertainty; the second practice is time intensive, requiring the development of separate testing infrastructure. In theory, robust optimization provides an alternative, allowing set based conceptualizations of uncertainty to be represented during model development as optimizable design parameters. How these theoretical benefits translate to design practice has not previously been studied. In this work, we analyzed present use of geometric programs as design models in the aerospace industry to determine the current state-of-the-art, then conducted a human-subjects experiment to investigate how various mathematical representations of uncertainty affect design space exploration. We found that robust optimization led to far more efficient explorations of possible designs with only small differences in an experimental participant's understanding of their model. Specifically, the Pareto frontier of a typical participant using robust optimization left less performance "on the table" across various levels of risk than the very best frontiers of participants using industry-standard practices.
机译:工程师设计了一个本质上不确定的世界。在设计过程的早期阶段,它们通常通过手动选择特定的最坏情况并将不确定的参数与安全因子乘以或通过使用Monte Carlo模拟来估计其设计可行的概率范围来估计这种不确定性。第一次做法的安全因素由工业和组织标准决定,提供有限的不确定性叙述;第二种做法是时间密集,需要开发单独的测试基础设施。理论上,稳健的优化提供了一种替代方案,允许基于基于的不确定性概念提出来在模型开发期间表示为可优化的设计参数。以前还没有研究这些理论益处转化为设计实践。在这项工作中,我们分析了现在使用几何程序作为航空航天行业的设计模型,以确定目前的最先进的,然后进行了人类的实验,以研究不确定性的各种数学表示如何影响设计空间探索。我们发现强大的优化导致了对可能的设计的更有效的探索,只有实验参与者对其模型的理解小的差异。具体而言,典型参与者的帕累托前沿使用强大的优化留下的性能较少,这些级别的风险越来越多的风险,而不是使用行业标准实践的最佳参与者的前沿。

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