To cite this paper use one of the standards below:
The Amazon is the largest tropical forest in the world and plays a central role in the Earth's climate system, both influencing and responding to various climatic processes. Its primary basin, which shares its name, is closely coupled with global atmospheric circulation patterns. However, the increasing occurrence of droughts in recent decades is pushing this ecosystem toward a tipping point. This study develops an early warning system based on observational data to anticipate meteorological droughts in the Central Amazon Basin at seasonal lead times. We propose the use of machine learning algorithms to identify relationships between precipitation deficits in the region and sea surface temperature (SST) anomalies. This methodology, rooted in a supervised learning approach for time series forecasting, leverages signals from relevant SST modes to predict a regional meteorological drought index. The approach yielded promising results, demonstrating that observational data-driven methodologies can contribute to the anticipation of extreme events in this critical climatic hotspot.
With nearly 200,000 papers published, Galoá empowers scholars to share and discover cutting-edge research through our streamlined and accessible academic publishing platform.
Learn more about our products:
This proceedings is identified by a DOI , for use in citations or bibliographic references. Attention: this is not a DOI for the paper and as such cannot be used in Lattes to identify a particular work.
Check the link "How to cite" in the paper's page, to see how to properly cite the paper