6 research outputs found
High-resolution global coupled ocean/sea ice modeling
This essay is from: NERSC Annual Report 2002 edited by John Hules
Publication Date: 01-31-2003
Abstract: The National Energy Research Scientific Computing Center (NERSC) is the primary computational
resource for scientific research funded by the DOE Office of Science. The Annual Report for
FY2002 includes a summary of recent computational science conducted on NERSC systems (with
abstracts of significant and representativ
A Variational Method for Sea Ice Ridging in Earth System Models
The article of record as published may be found atĀ https://doi.org/10.1029/2018MS001395We have derived an analytic form of the thickness redistribution function, ĪØ, and compressive strength of sea ice using variational principles. By using the technique of coarseāgraining vertical sea ice deformation, or ridging, in the momentum equation of the pack, we isolate frictional energy loss from potential energy gain in the collision of floes. The method accounts for macroporosity of ridge rubble, ĻR, and by including this in the state space of the pack, we expand the sea ice thickness distribution, g(h), to a bivariate distribution, g(h,ĻR). The effect of macroporosity is for the first time included in the largeāscale mass conservation and momentum equations of frozen oceans. We make assumptions that have simplified the problem, such as treating sea ice as a granular material in ridges, and assuming that bending moments associated with ridging are perturbations around an isostatic state. Regardless of these simplifications, the coarseāgrained ridge model is highly predictive of macroporosity and ridge shape. By ensuring that vertical sea ice deformation observes a variational principle both at the scale of individual ridges and over the pack as a whole, we can predict distributions of ridge shapes using equations that can be solved in Earth system models. Our method also offers the possibility of more accurate derivations of sea ice thickness from ice freeboard measured by spaceāborne altimeters over polar oceans
Iceāocean coupled computations for sea-ice prediction to support ice navigation in Arctic sea routes
With the recent rapid decrease in summer sea ice in the Arctic Ocean extending the navigation period in the Arctic sea routes (ASR), the precise prediction of ice distribution is crucial for safe and efficient navigation in the Arctic Ocean. In general, however, most of the available numerical models have exhibited significant uncertainties in short-term and narrow-area predictions, especially in marginal ice zones such as the ASR. In this study, we predict short-term sea-ice conditions in the ASR by using a mesoscale eddy-resolving iceāocean coupled model that explicitly treats ice floe collisions in marginal ice zones. First, numerical issues associated with collision rheology in the iceāocean coupled model (iceāPrinceton Ocean Model [POM]) are discussed and resolved. A model for the whole of the Arctic Ocean with a coarser resolution (about 25 km) was developed to investigate the performance of the iceāPOM model by examining the reproducibility of seasonal and interannual sea-ice variability. It was found that this coarser resolution model can reproduce seasonal and interannual sea-ice variations compared to observations, but it cannot be used to predict variations over the short-term, such as one to two weeks. Therefore, second, high-resolution (about 2.5 km) regional models were set up along the ASR to investigate the accuracy of short-term sea-ice predictions. High-resolution computations were able to reasonably reproduce the sea-ice extent compared to Advanced Microwave Scanning RadiometerāEarth Observing System satellite observations because of the improved expression of the iceāalbedo feedback process and the iceāeddy interaction process