Title of article :
A probabilistic graphical model approach to stochastic multiscale partial differential equations
Author/Authors :
Wan ، نويسنده , , Jiang and Zabaras، نويسنده , , Nicholas، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
34
From page :
477
To page :
510
Abstract :
We develop a probabilistic graphical model based methodology to efficiently perform uncertainty quantification in the presence of both stochastic input and multiple scales. Both the stochastic input and model responses are treated as random variables in this framework. Their relationships are modeled by graphical models which give explicit factorization of a high-dimensional joint probability distribution. The hyperparameters in the probabilistic model are learned using sequential Monte Carlo (SMC) method, which is superior to standard Markov chain Monte Carlo (MCMC) methods for multi-modal distributions. Finally, we make predictions from the probabilistic graphical model using the belief propagation algorithm. Numerical examples are presented to show the accuracy and efficiency of the predictive capability of the developed graphical model.
Keywords :
Sequential Monte Carlo , Stochastic partial differential equations , Bayesian , Probabilistic graphical models , uncertainty quantification , multiscale modeling , belief propagation
Journal title :
Journal of Computational Physics
Serial Year :
2013
Journal title :
Journal of Computational Physics
Record number :
1485888
Link To Document :
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