Bridging iterative Ensemble Smoother and multiple-point geostatistics for better flow and transport modeling

被引:24
作者
Cao, Zhendan [1 ]
Li, Liangping [1 ]
Chen, Kang [2 ]
机构
[1] South Dakota Sch Mines & Technol, Dept Geol & Geol Engn, Rapid City, SD 57701 USA
[2] Hebei GEO Univ, Sch Water Resources & Environm, Shijiazhuang 050031, Hebei, Peoples R China
关键词
Inverse modeling; Iterative Ensemble Smoother; Pilot point; Direct Sampling; MONTE-CARLO METHODS; DATA ASSIMILATION; HYDRAULIC CONDUCTIVITY; INVERSE METHODS; CALIBRATION; SIMULATION; FIELD;
D O I
10.1016/j.jhydrol.2018.08.023
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Inverse method can be used to fill the gap between huge amount of data from sensors and complex groundwater model. The iterative Ensemble Smoother (iES) is one of the most efficient algorithms applied to groundwater modeling for data assimilation. However, the iES only works for multi-Gaussian fields, because two-point statistics are used to estimate the co-relation between state variables and parameters. In curvilinear geometries, such as sinuous channels in fluvial deposits, the distribution of hydraulic conductivity is non-multiGaussian. Multiple-Point Geostatistics (MPG) method has gained popularity for modeling curvilinear structures by conditioning on directly measured data, such as conductivities. This paper is aimed at bridging the iES and MPG method via pilot points to deal with inverse problem for further conditioning on indirect data, such as piezometric head, in non-Gaussian fields. As a result, the better flow and transport modeling will be achieved because both data and the concept model (e.g., geological structures) are honored after data assimilation. To do that, the iES is used to update conductivities at pilot points by assimilating indirect data, then the updated values at pilot points together with measured conductivities will be used as hard data to model hydraulic conductivity field via Direct Sampling, an MPG method. A synthetic example was used to demonstrate the methodology in terms of characterization of conductivity and flow and transport predictions. The results show that this new approach can not only assimilate dynamic data into groundwater flow model but also preserve curvilinear structures.
引用
收藏
页码:411 / 421
页数:11
相关论文
共 43 条
[1]  
[Anonymous], 1999, DOCUMENTATION USERS
[2]   Ensemble smoother assimilation of hydraulic head and return flow data to estimate hydraulic conductivity distribution [J].
Bailey, R. ;
Bau, D. .
WATER RESOURCES RESEARCH, 2010, 46
[3]   Estimating spatially-variable rate constants of denitrification in irrigated agricultural groundwater systems using an Ensemble Smoother [J].
Bailey, Ryan T. ;
Bau, Domenico A. ;
Gates, Timothy K. .
JOURNAL OF HYDROLOGY, 2012, 468 :188-202
[4]  
Bear J., 1988, DYNAMICS FLUIDS PORO
[5]   History matching under training-image-based geological model constraints [J].
Caers, J .
SPE JOURNAL, 2003, 8 (03) :218-226
[6]   Data assimilation for transient flow in geologic formations via ensemble Kalman filter [J].
Chen, Yan ;
Zhang, Dongxiao .
ADVANCES IN WATER RESOURCES, 2006, 29 (08) :1107-1122
[7]   Dealing with spatial heterogeneity [J].
de Marsily, G ;
Delay, F ;
Gonçalvès, J ;
Renard, P ;
Teles, V ;
Violette, S .
HYDROGEOLOGY JOURNAL, 2005, 13 (01) :161-183
[8]  
Deutsch CV., 1992, Geostatistical Software Library and User's Guide, Vol 119
[9]   Ensemble smoother with multiple data assimilation [J].
Emerick, Alexandre A. ;
Reynolds, Albert C. .
COMPUTERS & GEOSCIENCES, 2013, 55 :3-15