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Acknowledgements
The authors acknowledge the CMEMS Phase 1 contract for the Arctic MFC. Additionally, the EU FP7 SWARP project has contributed complementary research on waves-in-ice coupling, the RETROSPECT project from the Research Council of Norway on waves-ocean interactions. Grants of computing time (nn2993k) and storage (ns2993k) from the Norwegian Sigma2 infrastructures are also gratefully acknowledged, as well as computing time from the PRACE-DECI project BHAO.
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Bertino, L., Xie, J. (2020). Operational Forecasting of Sea Ice in the Arctic Using TOPAZ System. In: Johannessen, O., Bobylev, L., Shalina, E., Sandven, S. (eds) Sea Ice in the Arctic. Springer Polar Sciences. Springer, Cham. https://doi.org/10.1007/978-3-030-21301-5_9
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