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Javier Tomasella

National Institute for Space Research

SCHOLARLY PAPERS

3

DOWNLOADS

419

TOTAL CITATIONS

3

Scholarly Papers (3)

1.

Unprecedented Flooding in Porto Alegre Metropolitan Region (Southern Brazil) in May 2024: Causes, Risks, and Impacts

Number of pages: 32 Posted: 17 Jun 2024
affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, São Paulo State University Júlio de Mesquita Filho, National Center for Monitoring and Early Warning of Natural Disasters- Brazil, University of São Paulo (USP), affiliation not provided to SSRN, affiliation not provided to SSRN, affiliation not provided to SSRN, National Institute for Space Research, affiliation not provided to SSRN and Nanyang Technological University (NTU)
Downloads 318 (236,739)
Citation 3

Abstract:

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Porto Alegre Flood 2024, flood risk management, urban flooding, Extreme Events, Risk to people.

2.

Assessment of Subseasonal Streamflow Predictions in a Tropical Basin

Number of pages: 24 Posted: 24 Feb 2024
affiliation not provided to SSRN, National Institute for Space Research, University Corporation for Atmospheric Research and George Mason University
Downloads 80 (803,225)

Abstract:

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Subseasonal-to-seasonal forecasting, bias correction, hydrological forecasting, low-flows, high-flows

3.

Predicting Plant Available Water in Brazilian Soils: Insights into the Role of Soil Organic Carbon

Number of pages: 53 Posted: 18 May 2026
Embrapa Instrumentation, Embrapa Instrumentation, Embrapa Instrumentation, affiliation not provided to SSRN, National Institute for Space Research, affiliation not provided to SSRN, Santa Catarina State University and University of São Paulo (USP)
Downloads 21 (1,448,301)

Abstract:

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plant available water, soil organic carbon, pedotransfer functions, tropical soils, Machine learning, climate change adaptation