2019
DOI: 10.5194/gmd-2018-315
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Surrogate-assisted Bayesian inversion for landscape and basin evolution models

Abstract: The complex and computationally expensive features of the forward landscape and sedimentary basin evolution models pose a major challenge in the development of efficient inference and optimization methods. Bayesian inference provides a methodology for estimation and uncertainty quantification of free model parameters. In our previous work, parallel tempering Bayeslands was developed as a framework for parameter estimation and uncertainty quantification for the landscape and basin evolution modelling software B… Show more

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