Variational Inference at Glacier Scale
- URL: http://arxiv.org/abs/2108.07263v1
- Date: Mon, 16 Aug 2021 17:56:43 GMT
- Title: Variational Inference at Glacier Scale
- Authors: Douglas J. Brinkerhoff
- Abstract summary: We characterize the complete joint posterior distribution over spatially-varying basal traction and ice softness parameters of an ice sheet model.
We find that posterior uncertainty in regions of slow flow is high regardless of the choice of observational noise model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: We characterize the complete joint posterior distribution over
spatially-varying basal traction and and ice softness parameters of an ice
sheet model from observations of surface speed by using stochastic variational
inference combined with natural gradient descent to find an approximating
variational distribution. By placing a Gaussian process prior over the
parameters and casting the problem in terms of eigenfunctions of a kernel, we
gain substantial control over prior assumptions on parameter smoothness and
length scale, while also rendering the inference tractable. In a synthetic
example, we find that this method recovers known parameters and accounts for
mutual indeterminacy, both of which can influence observed surface speed. In an
application to Helheim Glacier in Southeast Greenland, we show that our method
scales to glacier-sized problems. We find that posterior uncertainty in regions
of slow flow is high regardless of the choice of observational noise model.
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