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Uncertainty Quantification for Polynomial Systems via Bernstein Expansions

机译:通过Bernstein展开的多项式系统不确定度量化。

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摘要

This paper presents a unifying framework to uncertainty quantification for systems having polynomial response metrics that depend on both aleatory and epistemic uncertainties. The approach proposed, which is based on the Bernstein expansions of polynomials, enables bounding the range of moments and failure probabilities of response metrics as well as finding supersets of the extreme epistemic realizations where the limits of such ranges occur. These bounds and supersets, whose analytical structure renders them free of approximation error, can be made arbitrarily tight with additional computational effort. Furthermore, this framework enables determining the importance of particular uncertain parameters according to the extent to which they affect the first two moments of response metrics and failure probabilities. This analysis enables determining the parameters that should be considered uncertain as well as those that can be assumed to be constants without incurring significant error. The analytical nature of the approach eliminates the numerical error that characterizes the sampling-based techniques commonly used to propagate aleatory uncertainties as well as the possibility of under predicting the range of the statistic of interest that may result from searching for the best- and worstcase epistemic values via nonlinear optimization or sampling.
机译:本文为具有依赖于不确定性和认知不确定性的多项式响应度量的系统提供了不确定性量化的统一框架。所提出的方法基于多项式的伯恩斯坦展开式,它能够确定响应度量的矩范围和失效概率,并能找到发生这种范围极限的极端认识性实现的超集。这些边界和超集的解析结构使它们摆脱了近似误差,可以通过额外的计算工作将其任意紧缩。此外,该框架使得能够根据特定不确定性参数影响响应指标和失败概率的前两个时刻的程度来确定其重要性。通过这种分析,可以确定应该被视为不确定的参数以及可以假定为常数的参数,而不会引起重大误差。该方法的分析性质消除了数值误差,该数值误差表征了通常用于传播偶然性不确定性的基于采样的技术的特征,并且消除了因预测最佳和最坏情况的认识论而可能导致的预期统计量范围预测不足的可能性通过非线性优化或采样得到的值。

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