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A limited-memory acceleration strategy for MCMC sampling in hierarchical Bayesian calibration of hydrological models

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posted on 2025-05-09, 23:41 authored by George KuczeraGeorge Kuczera, Dmitri Kavetski, Benjamin Renard, Mark Thyer
Hydrological calibration and prediction using conceptual models is affected by forcing/response data uncertainty and structural model error. The Bayesian Total Error Analysis methodology uses a hierarchical representation of individual sources of uncertainty. However, it is shown that standard multiblock “Metropolis-within-Gibbs” Markov chain Monte Carlo (MCMC) samplers commonly used in Bayesian hierarchical inference are exceedingly computationally expensive when applied to hydrologic models, which use recursive numerical solutions of coupled nonlinear differential equations to describe the evolution of catchment states such as soil and groundwater storages. This note develops a “limited-memory” algorithm for accelerating multiblock MCMC sampling from the posterior distributions of such models using low-dimensional jump distributions. The new algorithm exploits the decaying memory of hydrological systems to provide accurate tolerance-based approximations of traditional “full-memory” MCMC methods and is orders of magnitude more efficient than the latter.

History

Journal title

Water Resources Research

Volume

46

Publisher

American Geophysical Union

Language

  • en, English

College/Research Centre

Faculty of Engineering and Built Environment

School

School of Engineering

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