Abstract
The Bayesian inverse approach proposed by Woodbury and Ulrych (2000) is extended to estimate the transmissivity fields of highly heterogeneous aquifers for steady state ground water flow. Boundary conditions are Dirichlet and Neumann type, and sink and source terms are included. A first-order approximation of Taylor's series for the exponential terms introduced by sinks and sources or the Neumann condition in the governing equation is adopted. Such a treatment leads to a linear finite element formulation between hydraulic head and the logarithm of the transmissivity - denoted as In(T) - perturbations. An updating procedure similar to that of Woodbury and Ulrych (2000) can be performed. This new algorithm is examined against a generic example. It is found that the linearized solution approximates the true solution with an R 2 coefficient = 0.96 for an In(T) variance of 9 for the test case. The addition of hydraulic head data is shown to improve the In(T) estimates, in comparison to simply interpolating the sparse In(T) data alone. The new Bayesian code is also employed to calibrate a high-resolution finite difference MODFLOW model of the Edwards Aquifer in southwest Texas. The posterior In(T) field from this application yields better head fit when compared to the prior In(T) field determined from upscaling and cokriging. We believe that traditional MODFLOW grids could be imported into the new Bayes code fairly seamlessly and thereby enhance existing calibration of many aquifers.
Original language | English |
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Pages (from-to) | 724-733 |
Number of pages | 10 |
Journal | Ground Water |
Volume | 42 |
Issue number | 5 |
DOIs | |
State | Published - 2004 |
Externally published | Yes |