A probabilistic generative deep learning framework reconstructs global historical climate fields from 1850 onward, revealing higher early 20th-century warming driven by stronger polar trends and localized modern hotspots compared to existing products.
F.et al.The version-2 global precipitation climatology project (GPCP) monthly precipitation analysis (1979–present).J
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Generative deep learning improves reconstruction of global historical climate records
A probabilistic generative deep learning framework reconstructs global historical climate fields from 1850 onward, revealing higher early 20th-century warming driven by stronger polar trends and localized modern hotspots compared to existing products.