A Monte Carlo framework for probabilistic analysis and variance decomposition with distribution parameter uncertainty

Volume: 197, Pages: 106807 - 106807
Published: May 1, 2020
Abstract
Probabilistic methods are used with modeling and simulation to predict variation in system performance and assess risk due to randomness in model inputs such as material properties, loads, and boundary conditions. It is common practice to assume that the input distributions are known. However, this discounts the epistemic uncertainty in the values of the distribution parameters, which can be attributed to the availability of limited data to...
Paper Details
Title
A Monte Carlo framework for probabilistic analysis and variance decomposition with distribution parameter uncertainty
Published Date
May 1, 2020
Volume
197
Pages
106807 - 106807
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