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Zandsalimi, Zanko, Barbosa, Sergio A., Alemazkoor, Negin, Goodall, Jonathan L., Shafiee-Jood, Majid (2025) Deep learning-based downscaling of global digital elevation models for enhanced urban flood modeling. Journal of Hydrology, 653. doi:10.1016/j.jhydrol.2025.132687

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Reference TypeJournal (article/letter/editorial)
TitleDeep learning-based downscaling of global digital elevation models for enhanced urban flood modeling
JournalJournal of Hydrology
AuthorsZandsalimi, ZankoAuthor
Barbosa, Sergio A.Author
Alemazkoor, NeginAuthor
Goodall, Jonathan L.Author
Shafiee-Jood, MajidAuthor
Year2025 (June)Volume653
PublisherElsevier BV
DOIdoi:10.1016/j.jhydrol.2025.132687Search in ResearchGate
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Mindat Ref. ID17966995Long-form Identifiermindat:1:5:17966995:8
GUID0
Full ReferenceZandsalimi, Zanko, Barbosa, Sergio A., Alemazkoor, Negin, Goodall, Jonathan L., Shafiee-Jood, Majid (2025) Deep learning-based downscaling of global digital elevation models for enhanced urban flood modeling. Journal of Hydrology, 653. doi:10.1016/j.jhydrol.2025.132687
Plain TextZandsalimi, Zanko, Barbosa, Sergio A., Alemazkoor, Negin, Goodall, Jonathan L., Shafiee-Jood, Majid (2025) Deep learning-based downscaling of global digital elevation models for enhanced urban flood modeling. Journal of Hydrology, 653. doi:10.1016/j.jhydrol.2025.132687
In(2025) Journal of Hydrology Vol. 653. Elsevier BV

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