A MOMENT-MATCHING METHOD TO STUDY THE VARIABILITY OF PHENOMENA DESCRIBED BY PARTIAL DIFFERENTIAL EQUATIONS

被引:2
作者
Gerbeau, Jean-Frederic [1 ]
Lombardi, Damiano [1 ]
Tixier, Eliott [1 ]
机构
[1] Sorbonne Univ, Inria Paris, Lab Jacques Louis Lions, F-75012 Paris, France
关键词
stochastic inverse problem; maximum entropy; moment matching; backward uncertainty quantification; UNCERTAINTY QUANTIFICATION; MAXIMUM-ENTROPY; OPTIMIZATION; FRAMEWORK; MODEL;
D O I
10.1137/16M1103476
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Many phenomena are modeled by deterministic differential equations, whereas the observation of these phenomena, in particular in life sciences, exhibits an important variability. This paper addresses the following question: how can the model be adapted to reflect the observed variability? Given an adequate model, it is possible to account for this variability by allowing some parameters to adopt a stochastic behavior. Finding the parameter probability density function that explains the observed variability is a difficult stochastic inverse problem, especially when the computational cost of the forward problem is high. In this paper, a nonparametric and nonintrusive procedure based on offline computations of the forward model is proposed. It infers the probability density function of the uncertain parameters from the matching of the statistical moments of observable degrees of freedom (DOFs) of the model. This inverse procedure is improved by incorporating an algorithm that selects a subset of the model DOFs that both reduces its computational cost and increases its robustness. This algorithm uses the precomputed model outputs to build an approximation of the local sensitivities. The DOFs are selected so that the maximum information on the sensitivities is conserved. The proposed approach is illustrated with elliptic and parabolic partial differential equations.
引用
收藏
页码:B743 / B765
页数:23
相关论文
共 43 条
[1]   Improved statistical models for limited datasets in uncertainty quantification using stochastic collocation [J].
Alwan, Aravind ;
Aluru, N. R. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2013, 255 :521-539
[2]   A stochastic collocation method for elliptic partial differential equations with random input data [J].
Babuska, Ivo ;
Nobile, Fabio ;
Tempone, Raul .
SIAM JOURNAL ON NUMERICAL ANALYSIS, 2007, 45 (03) :1005-1034
[3]  
Box G. E., 2011, Wiley Classics Lib, V40
[4]  
Bungartz HJ, 2004, ACT NUMERIC, V13, P147, DOI 10.1017/S0962492904000182
[5]   ADJOINT SENSITIVITY ANALYSIS FOR DIFFERENTIAL-ALGEBRAIC EQUATIONS: THE ADJOINT DAE SYSTEM AND ITS NUMERICAL SOLUTION [J].
Cao, Yang ;
Li, Shengtai ;
Petzold, Linda ;
Serban, Radu .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2003, 24 (03) :1076-1089
[6]   Uncertainty quantification for porous media flows [J].
Christie, Mike ;
Demyanov, Vasily ;
Erbas, Demet .
JOURNAL OF COMPUTATIONAL PHYSICS, 2006, 217 (01) :143-158
[7]   Exploiting active subspaces to quantify uncertainty in the numerical simulation of the HyShot II scramjet [J].
Constantine, P. G. ;
Emory, M. ;
Larsson, J. ;
Iaccarino, G. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2015, 302 :1-20
[8]  
Constantine P.G., 2015, Active Subspaces: Emerging Ideas for Dimension Reduction in Parameter Studies. SIAM Spotlights 2., V2, DOI DOI 10.1137/1.9781611973860
[9]   ACTIVE SUBSPACE METHODS IN THEORY AND PRACTICE: APPLICATIONS TO KRIGING SURFACES [J].
Constantine, Paul G. ;
Dow, Eric ;
Wang, Qiqi .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2014, 36 (04) :A1500-A1524
[10]  
Fisher RA., 1930, A Genetical Theory of Natural Selection, DOI [10.5962/bhl.title.27468, DOI 10.5962/BHL.TITLE.27468]