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A decomposition-based uncertainty quantification approach for environmental impacts of aviation technology and operation

机译:基于分解的不确定性量化方法对航空技术和运营环境的影响

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As a measure to manage the climate impact of aviation, significant enhancements to aviation technologies and operations are necessary. When assessing these enhancements and their respective impacts on the climate, it is important that we also quantify the associated uncertainties. This is important to support an effective decision and policymaking process. However, such quantification of uncertainty is challenging, especially in a complex system that comprises multiple interacting components. The uncertainty quantification task can quickly become computationally intractable and cumbersome for one individual or group to manage. Recognizing the challenge of quantifying uncertainty in multicomponent systems, we utilize a divide-and-conquer approach, inspired by the decomposition-based approaches used in multidisciplinary analysis and optimization. Specifically, we perform uncertainty analysis and global sensitivity analysis of our multicomponent aviation system in a decomposition-based manner. In this work, we demonstrate how to handle a high-dimensional multicomponent interface using sensitivity-based dimension reduction and a novel importance sampling method. Our results demonstrate that the decomposition-based uncertainty quantification approach can effectively quantify the uncertainty of a feed-forward multicomponent system for which the component models are housed in different locations and owned by different groups.
机译:作为管理航空对气候的影响的一项措施,必须大力改善航空技术和运行。在评估这些增强措施及其对气候的影响时,重要的是我们还要量化相关的不确定性。这对于支持有效的决策和决策过程很重要。然而,不确定性的这种量化是具有挑战性的,特别是在包括多个相互作用成分的复杂系统中。对于一个人或一组人来说,不确定性量化任务可能很快变得难以处理且繁琐。认识到量化多组件系统中不确定性的挑战,我们采用了分治法,这一方法受到多学科分析和优化中基于分解的方法的启发。具体来说,我们以基于分解的方式对多组件航空系统进行不确定性分析和全局灵敏度分析。在这项工作中,我们演示了如何使用基于灵敏度的降维和新颖的重要性采样方法来处理高维多组件界面。我们的结果表明,基于分解的不确定性量化方法可以有效地量化前馈多组件系统的不确定性,该系统的组件模型位于不同的位置并由不同的组拥有。

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