Artigo Acesso aberto Produção Nacional Revisado por pares

Machine Learning Approaches to Extreme Weather Events Forecast in Urban Areas: Challenges and Initial Results

2022; Publishing center of the South Ural State University; Volume: 9; Issue: 1 Linguagem: Inglês

10.14529/jsfi220104

ISSN

2409-6008

Autores

Fábio Porto, Mariza Ferro, Eduardo Ogasawara, Thiago Moeda, Claudio Daniel Tenorio de Barros, Anderson Chaves da Silva, Rocío Zorrilla, Rafael Silva Pereira, Rafaela Castro, João Victor Silva, Rebecca Salles, Augusto J. M. da Fonseca, Juliana Hermsdorff, Marcelo Magalhães, Vítor J. Sá, Antônio Adolfo Simões, Carlos Cardoso, Eduardo Bezerra,

Tópico(s)

Hydrological Forecasting Using AI

Resumo

Weather forecast services in urban areas face an increasingly hard task of alerting the population on extreme weather events. The hardness of the problem is due to the dynamics of the phenomenon, which challenges numerical weather prediction models and opens an opportunity for Machine Learning (ML) based models that may learn complex mappings between input-output from data. In this paper, we present an ongoing research project which aims at building ML predictive models for extreme precipitation forecast in urban areas, in particular in the Rio de Janeiro City. We present the techniques that we have been developing to improve rainfall prediction and extreme rainfall forecast, along with some initial experimental results. Finally, we discuss some challenges that remain to be tackled in this project.

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