Uncertainty quantification for nonlinear difference equations with dependent random inputs via a stochastic Galerkin projection technique
Fecha
Autores
Directores
Handle
https://riunet.upv.es/handle/10251/139463
Cita bibliográfica
Calatayud-Gregori, J.; Cortés, J.; Jornet-Sanz, M. (2019). Uncertainty quantification for nonlinear difference equations with dependent random inputs via a stochastic Galerkin projection technique. Communications in Nonlinear Science and Numerical Simulation. 72:108-120. https://doi.org/10.1016/j.cnsns.2018.12.011
Titulación
Resumen
[EN] Discrete stochastic systems model discrete response data on some phenomenon with inherent uncertainty. The main goal of uncertainty quantification is to derive the probabilistic features of the stochastic system. This paper deals with theoretical and computational aspects of uncertainty quantification for nonlinear difference equations with dependent random inputs. When the random inputs are independent random variables, a generalized Polynomial Chaos (gPC) approach has been usually used to computationally quantify the uncertainty of stochastic systems. In the gPC technique, the stochastic Galerkin projections are done onto linear spans of orthogonal polynomials from the Askey-Wiener scheme or from Gram-Schmidt orthonormalization procedures. In this regard, recent results have established the algebraic or exponential convergence of these Galerkin projections to the solution process. In this paper, as the random inputs of the difference equation may be dependent, we perform Galerkin projections directly onto linear spans of canonical polynomials. The main contribution of this paper is to study the spectral convergence of these Galerkin projections for the solution process of general random difference equations. Spectral convergence is important to derive the main statistics of the response process at a cheap computational expense. In this regard, the numerical experiments bring to light the theoretical discussion of the paper.
Palabras clave
Nonlinear random difference equation, Stochastic Galerkin projection technique, Uncertainty quantification, Dependent random inputs
ISSN
1007-5704
ISBN
Fuente
Communications in Nonlinear Science and Numerical Simulation
DOI
10.1016/j.cnsns.2018.12.011
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Agradecimientos
This work has been supported by the Spanish Ministerio de Economia y Competitividad grant MTM2017-89664-P. The co-author Marc Jornet acknowledges the doctorate scholarship granted by Programa de Ayudas de Investigacion y Desarrollo (PAID), Universitat Politecnica de Valencia.