A Hessian-based method for uncertainty quantification in global ocean state estimation.

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Date
2014Author
Kalmikov, Alexander G.
Heimbach, Patrick
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Derivative-based methods are developed for uncertainty quantification (UQ) in largescale ocean state estimation. The estimation system is based on the adjoint method for solving
a least-squares optimization problem, whereby the state-of-the-art MIT general circulation model
(MITgcm) is fit to observations. The UQ framework is applied to quantify Drake Passage transport
uncertainties in a global idealized barotropic configuration of the MITgcm. Large error covariance
matrices are evaluated by inverting the Hessian of the misfit function using matrix-free numerical
linear algebra algorithms. The covariances are projected onto target output quantities of the model
(here Drake Passage transport) by Jacobian transformations. First and second derivative codes of
the MITgcm are generated by means of algorithmic differentiation (AD). Transpose of the chain rule
product of Jacobians of elementary forward model operations implements a computationally efficient
adjoint code. Computationa.....
Resource URL
https://epubs.siam.org/doi/pdf/10.1137/130925311Journal
SIAM Journal of Scientific ComputingVolume
36Issue
5Page Range
pp. S267–S295Document Language
enSustainable Development Goals (SDG)
14.ABest Practice Type
Manual (incl. handbook, guide, cookbook etc)DOI Original
10.1137/130925311Citation
Kalmikov, A.G. and Heimbach, P. (2014) A Hessian-based method for uncertainty quantificiation in gllobal ocean state estimation. SIAM Journal of Scientific Computing, 36(5), pp. S267–S295. DOI: 10.1137/130925311Collections
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