2022
DOI: 10.1108/ec-04-2021-0205
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Uncertainty quantification for correlated variables combining p-box with copula upon limited observed data

Abstract: PurposeFor fast calculation of complex structure in engineering, correlations among input variables are often ignored in uncertainty propagation, even though the effect of ignoring these correlations on the output uncertainty is unclear. This paper aims to quantify the inputs uncertainty and estimate the correlations among them acorrding to the collected observed data instead of questionable assumptions. Moreover, the small size of the experimental data should also be considered, as it is such a common enginee… Show more

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“…Each of the distribution functions are uniform -F i (X i ) = U i , with U i being a corresponding unit uniform random variable Then, the copula can be defined as a function that defines the joint cumulative distribution function according to [37]:…”
Section: Copulamentioning
confidence: 99%
“…Each of the distribution functions are uniform -F i (X i ) = U i , with U i being a corresponding unit uniform random variable Then, the copula can be defined as a function that defines the joint cumulative distribution function according to [37]:…”
Section: Copulamentioning
confidence: 99%