Surrogate-Based Bayesian Inverse Modeling of the Hydrological System: An Adaptive Approach Considering Surrogate Structural Error

07/10/2018
by   Jiangjiang Zhang, et al.
0

Inverse modeling is vital for an improved hydrological prediction. However, this process can be computationally demanding as it usually requires a large number of model evaluations. To address this issue, one can take advantage of surrogate modeling techniques, e.g., the one based on sparse polynomial chaos expansion (PCE). Nevertheless, when structural error of the surrogate model is neglected in inverse modeling, the inversion results will be biased. In this paper, we develop a surrogate-based Bayesian inversion framework that rigorously quantifies and gradually eliminates the structural error of the surrogate. Specifically, two strategies are proposed and compared. The first strategy works by obtaining an ensemble of sparse PCE surrogates with Markov chain Monte Carlo sampling, while the second one uses Gaussian process (GP) to simulate the structural error of a single sparse PCE surrogate. With an active learning process, the surrogate structural error can be gradually reduced to a negligible level in the posterior region, where the original input-output relationship can be much more easily captured by PCE than in the prior. Demonstrated by one numerical case of groundwater contaminant source identification with 28 unknown input variables, it is found that both strategies can efficiently reduce the bias introduced by surrogate modeling, while the second strategy has a better performance as it integrates two methods (i.e., PCE and GP) that complement each other.

READ FULL TEXT
research
07/10/2018

Surrogate-Based Inverse Modeling of the Hydrological System: An Adaptive Approach Considering Surrogate Structural Error

Inverse modeling is vital for an improved hydrological prediction. Howev...
research
07/10/2018

Surrogate-Based Bayesian Inverse Modeling of the Hydrological System: An Adaptive Approach Considering Surrogate Approximation Erro

Bayesian inverse modeling is important for a better understanding of hyd...
research
12/06/2017

Inverse modeling of hydrologic systems with adaptive multi-fidelity Markov chain Monte Carlo simulations

Markov chain Monte Carlo (MCMC) simulation methods are widely used to as...
research
06/06/2022

Sparse Bayesian Learning for Complex-Valued Rational Approximations

Surrogate models are used to alleviate the computational burden in engin...
research
05/15/2020

Bayesian model inversion using stochastic spectral embedding

In this paper we propose a new sampling-free approach to solve Bayesian ...

Please sign up or login with your details

Forgot password? Click here to reset