We found a match
Your institution may have rights to this item. Sign in to continue.
- Title
Efficient Bayesian Inverse Modeling of Water Infiltration in Layered Soils.
- Authors
Gao, Hongbei; Zhang, Jiangjiang; Liu, Cong; Man, Jun; Chen, Cheng; Wu, Laosheng; Zeng, Lingzao
- Abstract
Core Ideas: The adaptive GP‐based MCMC was efficient to estimate hydraulic parameters in soils.Accuracy of the estimated parameters was verified by simulating experimental results.These simulations revealed a significant effect of layered structure on soil water flow. Modeling water movement in heterogeneous soils, e.g., layered soils, is an essential but challenging task that requires accurate estimation of multiple sets of soil hydraulic parameters. Markov chain Monte Carlo (MCMC) is a popular but computationally expensive method for parameter estimation. An adaptive Gaussian process (GP)‐based MCMC method proposed in our previous work presents significant computational efficiency. Nevertheless, its performance was evaluated only for synthetic numerical cases and has not been experimentally validated. Furthermore, its applicability in estimating hydraulic parameters of layered soils is still unknown. In this study, we systematically evaluated the performance of the GP‐based MCMC method in estimating the layered soil hydraulic parameters through a water infiltration experiment. It was shown that the proposed method could provide reliable estimations that were very close to those given by the original‐model‐based MCMC but at a much lower computational cost. The simulated soil water dynamics using the estimated parameters revealed a significant effect of layered heterogeneity on water flow. The lower layer(s) with higher water suction may cause persistent unsaturated status of the upper layer(s) during infiltration.
- Publication
Vadose Zone Journal, 2019, Vol 18, Issue 1, p1
- ISSN
1539-1663
- Publication type
Article
- DOI
10.2136/vzj2019.03.0029