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@ARTICLE{Xiao:903180,
author = {Xiao, Sinan and Xu, Teng and Reuschen, Sebastian and Nowak,
Wolfgang and Hendricks Franssen, Harrie-Jan},
title = {{B}ayesian {I}nversion of {M}ulti‐{G}aussian
{L}og‐{C}onductivity {F}ields {W}ith {U}ncertain
{H}yperparameters: {A}n {E}xtension of {P}reconditioned
{C}rank‐{N}icolson {M}arkov {C}hain {M}onte {C}arlo {W}ith
{P}arallel {T}empering},
journal = {Water resources research},
volume = {57},
number = {9},
issn = {0043-1397},
address = {[New York]},
publisher = {Wiley},
reportid = {FZJ-2021-04900},
pages = {e2021WR030313},
year = {2021},
abstract = {In conventional Bayesian geostatistical inversion, specific
values of hyperparameters characterizing the prior
distribution of random fields are required. However, these
hyperparameters are typically very uncertain in practice.
Thus, it is more appropriate to consider the uncertainty of
hyperparameters as well. The preconditioned Crank-Nicolson
Markov chain Monte Carlo with parallel tempering (pCN-PT)
has been used to efficiently solve the conventional Bayesian
inversion of high-dimensional multi-Gaussian random fields.
In this study, we extend pCN-PT to Bayesian inversion with
uncertain hyperparameters of multi-Gaussian fields. To
utilize the dimension robustness of the preconditioned
Crank-Nicolson algorithm, we reconstruct the problem by
decomposing the random field into hyperparameters and white
noise. Then, we apply pCN-PT with a Gibbs split to this
“new” problem to obtain the posterior samples of
hyperparameters and white noise, and further recover the
posterior samples of spatially distributed model parameters.
Finally, we apply the extended pCN-PT method for estimating
a finely resolved multi-Gaussian log-hydraulic conductivity
field from direct data and from head data to show its
effectiveness. Results indicate that the estimation of
hyperparameters with hydraulic head data is very challenging
and the posterior distributions of hyperparameters are only
slightly narrower than the prior distributions. Direct
measurements of hydraulic conductivity are needed to narrow
more the posterior distribution of hyperparameters. To the
best of our knowledge, this is a first accurate and fully
linearization free solution to Bayesian multi-Gaussian
geostatistical inversion with uncertain hyperparameters.},
cin = {IBG-3},
ddc = {550},
cid = {I:(DE-Juel1)IBG-3-20101118},
pnm = {2173 - Agro-biogeosystems: controls, feedbacks and impact
(POF4-217) / DFG project 359880532 - Computergestützter
Ansatz zur Kalibrierung und Validierung mathematischer
Modelle für Strömungen im Untergrund - COMPU-FLOW},
pid = {G:(DE-HGF)POF4-2173 / G:(GEPRIS)359880532},
typ = {PUB:(DE-HGF)16},
UT = {WOS:000703704400032},
doi = {10.1029/2021WR030313},
url = {https://juser.fz-juelich.de/record/903180},
}