Title of article
Boosting iterative stochastic ensemble method for nonlinear calibration of subsurface flow models
Author/Authors
Elsheikh، نويسنده , , Ahmed H. and Tavakoli، نويسنده , , Reza and Wheeler، نويسنده , , Mary F. and Hoteit، نويسنده , , Ibrahim، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
14
From page
10
To page
23
Abstract
A novel parameter estimation algorithm is proposed. The inverse problem is formulated as a sequential data integration problem in which Gaussian process regression (GPR) is used to integrate the prior knowledge (static data). The search space is further parameterized using Karhunen–Loève expansion to build a set of basis functions that spans the search space. Optimal weights of the reduced basis functions are estimated by an iterative stochastic ensemble method (ISEM). ISEM employs directional derivatives within a Gauss–Newton iteration for efficient gradient estimation. The resulting update equation relies on the inverse of the output covariance matrix which is rank deficient.
proposed algorithm we use an iterative regularization based on the ℓ2 Boosting algorithm. ℓ2 Boosting iteratively fits the residual and the amount of regularization is controlled by the number of iterations. A termination criteria based on Akaike information criterion (AIC) is utilized. This regularization method is very attractive in terms of performance and simplicity of implementation. The proposed algorithm combining ISEM and ℓ2 Boosting is evaluated on several nonlinear subsurface flow parameter estimation problems. The efficiency of the proposed algorithm is demonstrated by the small size of utilized ensembles and in terms of error convergence rates.
Keywords
Subsurface flow models , Boosting , Gaussian process regression , Parameter estimation , Karhunen–Loève expansion , Iterative stochastic ensemble method
Journal title
Computer Methods in Applied Mechanics and Engineering
Serial Year
2013
Journal title
Computer Methods in Applied Mechanics and Engineering
Record number
1595937
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