Performance evaluation of Eta/HadGEM2-ES and Eta/MIROC5 precipitation simulations over Brazil

Atmospheric Research - Tập 244 - Trang 105053 - 2020
André Almagro1, Paulo Tarso S. Oliveira1, Rafael Rosolem2, Stefan Hagemann3, Carlos A. Nobre4
1Federal University of Mato Grosso do Sul, CxP 549, Campo Grande, MS 79070-900, Brazil
2University of Bristol, Faculty of Engineering, University Walk, Clifton BS8 1TR, United Kingdom
3Helmholtz-Zentrum Geesthacht, Institute of Coastal Research, Max-Planck Str. 1, 21502 Geesthacht, Germany
4University of São Paulo, Institute of Advanced Studies, São Paulo, SP 05508-970, Brazil

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