Rainfall in the Urban Area and Its Impact on Climatology and Population Growth
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Published:2022-10-01
Issue:10
Volume:13
Page:1610
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ISSN:2073-4433
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Container-title:Atmosphere
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language:en
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Short-container-title:Atmosphere
Author:
da Silva Monteiro Lua, de Oliveira-Júnior José FranciscoORCID, Ghaffar Bushra, Tariq AqilORCID, Qin ShujingORCID, Mumtaz FaisalORCID, Correia Filho Washington Luiz FélixORCID, Shah MunawarORCID, da Rosa Ferraz Jardim Alexandre ManiçobaORCID, da Silva Marcos ViníciusORCID, de Barros Santiago DimasORCID, Barros Heliofábio Gomes, Mendes DavidORCID, Abreu Marcel CarvalhoORCID, de Souza AmauryORCID, Pimentel Luiz Cláudio GomesORCID, da Silva Jhon Lennon BezerraORCID, Aslam MuhammadORCID, Kuriqi AlbanORCID
Abstract
Due to the scarcity of studies linking the variability of rainfall and population growth in the capital cities of Northeastern Brazil (NEB), the purpose of this study is to evaluate the variability and multiscale interaction (annual and seasonal), and in addition, to detect their trends and the impact of urban growth. For this, monthly rainfall data between 1960 and 2020 were used. In addition, the detection of rainfall trends on annual and seasonal scales was performed using the Mann–Kendall (MK) test and compared with the phases of El Niño-Southern Oscillation (ENSO) and Pacific Decadal Oscillation (PDO). The relationship between population growth data and rainfall data for different decades was established. Results indicate that the variability of multiscale urban rainfall is directly associated with the ENSO and PDO phases, followed by the performance of rain-producing meteorological systems in the NEB. In addition, the anthropic influence is shown in the relational pattern between population growth and the variability of decennial rainfall in the capitals of the NEB. However, no capital showed a significant trend of increasing annual rainfall (as in the case of Aracaju, Maceió, and Salvador). The observed population increase in the last decades in the capitals of the NEB and the notable decreasing trend of rainfall could compromise the region’s water security. Moreover, if there is no strategic planning about water bodies, these changes in the rainfall pattern could be compromising.
Funder
National Key Research and Development Program of China National Natural Science Foundation of China Youth Fund Postdoctoral Research Foundation of China Fundamental Research Funds for the Central Universities
Subject
Atmospheric Science,Environmental Science (miscellaneous)
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