CENANAAug 31, 2018

Multilevel Monte Carlo for uncertainty quantification in structural engineering

arXiv:1808.106804 citationsh-index: 55
AI Analysis

For structural engineers needing efficient uncertainty quantification, this work demonstrates MLMC's practical speedup on benchmark beam problems, though it is an incremental application of existing methods.

This paper applies Multilevel Monte Carlo (MLMC) to quantify uncertainty in structural engineering problems involving beams with random Young's modulus, achieving up to several orders of magnitude speedup over classical Monte Carlo.

Practical structural engineering problems often exhibit a significant degree of uncertainty in the material properties being used, the dimensions of the modeled structures, etc. In this paper, we consider a cantilever beam and a beam clamped at both ends, both subjected to a static and a dynamic load. The material uncertainty resides in the Young's modulus, which is modeled by means of one random variable, sampled from a univariate Gamma distribution, or with multiple random variables, sampled from a Gamma random field. Three different responses are considered: the static elastic, the dynamic elastic and the static elastoplastic response. In the first two cases, we simulate the spatial displacement of a concrete beam and its frequency response in the elastic domain. The third case simulates the spatial displacement of a steel beam in the elastoplastic domain. In order to compute the statistical quantities of the static deflection and frequency response function, Multilevel Monte Carlo (MLMC) is combined with a Finite Element solver. In this paper, the computational costs and run times of the MLMC method are compared with those of the classical Monte Carlo method, demonstrating a significant speedup of up to several orders of magnitude for the studied cases.

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