SOUSA, W. G.; http://lattes.cnpq.br/7521514754114151; SOUSA, Welinagila Grangeiro de.
Resumen:
Extreme climatic events are a reality in various regions over time, and their impacts affect
different sectors, especially agriculture. A recently highlighted area is MATOPIBA,
formed by the union of the states of Maranhão, Tocantins, Piauí, and Bahia, which has
undergone significant social and environmental transformations due to the expansion of
intensive agriculture. This study aimed to evaluate the spatial and temporal patterns of
climate variability in the MATOPIBA region for the period from 1961 to 2100 under
different projected climate change scenarios. Historical monthly data series on
precipitation and air temperature for the period from 1961 to 2018 were used, obtained
from CRU-TS-4.03 reanalyses, which are part of the WorldClim 2.1 database. Future
monthly data (2020 to 2100) on precipitation and temperature were sourced from the
Global Climate Model (GCM) HadGEM2-ES (The Hadley Global Environmental Model
version 2), which incorporates bias correction through the Coupled Model
Intercomparison Project Phase 5 (CMIP5). Initially, the variability of droughts was
analyzed using the Standardized Precipitation and Evapotranspiration Index (SPEI) from
1961 to 2018 on a 12-month time scale, employing geoprocessing techniques and time
series analysis to understand the historical drought patterns in the region. A progressive
increase in events was observed throughout the region, especially in more recent periods,
with significant upward trends over the years. Subsequently, the seasonality of rainfall
and reference evapotranspiration for future projections during the period from 2020 to
2099 was analyzed, considering an intermediate scenario (RCP4.5) and a pessimistic
scenario (RCP8.5). The results indicated a reduction in rainfall, especially during the dry
period of the region, and significant increases in reference evapotranspiration,
highlighting the pessimistic RCP8.5 scenario as the most impactful for the studied region.
This information is relevant to guide decision-makers in adopting mitigation measures
for the potential impacts of these events.