Joint state-parameter estimation of a nonlinear stochastic energy balance model from sparse noisy data
-
Published:2019-08-14
Issue:3
Volume:26
Page:227-250
-
ISSN:1607-7946
-
Container-title:Nonlinear Processes in Geophysics
-
language:en
-
Short-container-title:Nonlin. Processes Geophys.
Author:
Lu FeiORCID, Weitzel NilsORCID, Monahan Adam H.
Abstract
Abstract. While nonlinear stochastic partial differential equations arise naturally in spatiotemporal modeling, inference for such systems often faces two major challenges: sparse noisy data and ill-posedness of the inverse problem of parameter estimation. To overcome the challenges, we introduce a strongly regularized posterior by normalizing the likelihood and by imposing physical constraints through priors of the parameters and states. We investigate joint parameter-state estimation by the regularized posterior in a physically motivated nonlinear stochastic energy balance model (SEBM) for paleoclimate reconstruction. The high-dimensional posterior is sampled by a particle Gibbs sampler that combines a Markov chain Monte Carlo (MCMC) method with an optimal particle filter exploiting the structure of the SEBM. In tests using either Gaussian or uniform priors based on the physical range of parameters, the regularized posteriors overcome the ill-posedness and lead to samples within physical ranges, quantifying the uncertainty in estimation. Due to the ill-posedness and the regularization, the posterior of parameters presents a relatively large uncertainty, and consequently, the maximum of the posterior, which is the minimizer in a variational approach, can have a large variation. In contrast, the posterior of states generally concentrates near the truth, substantially filtering out observation noise and reducing uncertainty in the unconstrained SEBM.
Publisher
Copernicus GmbH
Reference57 articles.
1. Alberty, J., Carstensen, C., and Funken, S. A.: Remarks around 50 lines of
Matlab: short finite element implementation, Numer. Algorithms, 20, 117–137,
1999. a 2. Andrieu, C., Doucet, A., and Holenstein, R.: Particle Markov chain Monte
Carlo methods, J. R. Stat. Soc. B, 72, 269–342, 2010. a, b, c, d, e 3. Annan, J., Hargreaves, J., Edwards, N., and Marsh, R.: Parameter estimation in
an intermediate complexity Earth System Model using an ensemble Kalman
filter, Ocean Model., 8, 135–154, 2005. a 4. Apte, A., Hairer, M., Stuart, A., and Voss, J.: Sampling the Posterior: An
Approach to Non-Gaussian Data Assimilation, Physica D, 230, 50–64, 2007. a 5. Bakka, H., Rue, H., Fuglstad, G. A., Riebler, A., Bolin, D., Illian, J., . and Lindgren, F.: Spatial modeling with R‐INLA: A review, Wiley Interdisciplinary Reviews: Computational Statistics, 10, e1443, 2018. a
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|