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Exploring the use of transformation group priors and the method of maximum relative entropy for Bayesian glaciological inversions

Published online by Cambridge University Press:  10 July 2017

Robert J. Arthern*
Affiliation:
Natural Environment Research Council, British Antarctic Survey, Cambridge, UK
*
Correspondence: Robert J. Arthern <rart@bas.ac.uk>
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Abstract

Ice-sheet models can be used to forecast ice losses from Antarctica and Greenland, but to fully quantify the risks associated with sea-level rise, probabilistic forecasts are needed. These require estimates of the probability density function (PDF) for various model parameters (e.g. the basal drag coefficient and ice viscosity). To infer such parameters from satellite observations it is common to use inverse methods. Two related approaches are in use: (1) minimization of a cost function that describes the misfit to the observations, often accompanied by explicit or implicit regularization, or (2) use of Bayes’ theorem to update prior assumptions about the probability of parameters. Both approaches have much in common and questions of regularization often map onto implicit choices of prior probabilities that are made explicit in the Bayesian framework. In both approaches questions can arise that seem to demand subjective input. One way to specify prior PDFs more objectively is by deriving transformation group priors that are invariant to symmetries of the problem, and then maximizing relative entropy, subject to any additional constraints. Here we investigate the application of these methods to the derivation of priors for a Bayesian approach to an idealized glaciological inverse problem.

Information

Type
Research Article
Copyright
Copyright © International Glaciological Society 2015
Figure 0

Fig. 1. Simultaneous inversion for basal drag coefficient, β, and viscosity, η, is not well posed. Any observed surface velocity could be produced either by a well-lubricated base with high viscosity (left), or by a slab with high basal drag and low viscosity (right). Prior information about basal drag and/or viscosity is needed to determine which situation is more likely. The inversion may also be illconditioned if features at the bed are too small to affect the shape or flow speed of the upper surface. The usual remedy for non-uniqueness or ill-conditioning is to regularize the problem, and this can be interpreted in Bayesian terms as specifying prior probabilities for basal drag and viscosity. The coordinate axes used for the simple slab model are shown.

Figure 1

Fig. 2. The posterior PDF for different values of non-dimensional basal drag coefficient, , and viscosity, .

Figure 2

Fig. 3. Multiple profiles of non-dimensional velocity, , overlain on the same plot, each colored according to the posterior probability for the particular combination of non-dimensional basal drag coefficient, , and viscosity, , that it represents. The profile corresponding to values of and that maximize the posterior PDF is shown as a white dashed curve.

Figure 3

Fig. 4. As Figure 2, but with a constraint on non-dimensional viscosity, .

Figure 4

Fig. 5. As Figure 3, but with a constraint on non-dimensional viscosity, .