Title of article
Clustered iterative stochastic ensemble method for multi-modal calibration of subsurface flow models
Author/Authors
Ahmed H. Elsheikh، نويسنده , , Jaroon Rungamornrat and Mary F. Wheeler، نويسنده , , Ibrahim Hoteit، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
16
From page
40
To page
55
Abstract
A novel multi-modal parameter estimation algorithm is introduced. Parameter estimation is an ill-posed inverse problem that might admit many different solutions. This is attributed to the limited amount of measured data used to constrain the inverse problem. The proposed multi-modal model calibration algorithm uses an iterative stochastic ensemble method (ISEM) for parameter estimation. ISEM employs an ensemble of directional derivatives within a Gauss–Newton iteration for nonlinear parameter estimation. ISEM is augmented with a clustering step based on k-means algorithm to form sub-ensembles. These sub-ensembles are used to explore different parts of the search space. Clusters are updated at regular intervals of the algorithm to allow merging of close clusters approaching the same local minima. Numerical testing demonstrates the potential of the proposed algorithm in dealing with multi-modal nonlinear parameter estimation for subsurface flow models.
Keywords
Subsurface Flow Models , Regularization , Multi-modal Optimization , Parameter estimation , k-means clustering
Journal title
Journal of Hydrology
Serial Year
2013
Journal title
Journal of Hydrology
Record number
1095708
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