Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products

Satellite products, such as the Integrated Multi-Satellite Retrievals of IMERG from the Global Precipitation Measurement (GPM) mission, have emerged as promising tools to analyze precipitation distribution and extremes, particularly in regions with low rain gauge density and sparse distribution, suc...

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Main Authors: Flávia Ferreira Batista, Daniele Tôrres Rodrigues, Cláudio Moisés Santos e Silva
Format: Article
Language:English
Published: Elsevier 2024-03-01
Series:Weather and Climate Extremes
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2212094724000070
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author Flávia Ferreira Batista
Daniele Tôrres Rodrigues
Cláudio Moisés Santos e Silva
author_facet Flávia Ferreira Batista
Daniele Tôrres Rodrigues
Cláudio Moisés Santos e Silva
author_sort Flávia Ferreira Batista
collection DOAJ
description Satellite products, such as the Integrated Multi-Satellite Retrievals of IMERG from the Global Precipitation Measurement (GPM) mission, have emerged as promising tools to analyze precipitation distribution and extremes, particularly in regions with low rain gauge density and sparse distribution, such as Brazil. However, regional validation of satellite data is crucial. In this context, the validation of GPM (IMERG) for the Parnaíba River Basin in northeastern Brazil is important due to its high hydrological potential and the presence of one of the largest expanding agricultural frontiers in the world. This study evaluates the estimation capacity of IMERG version 6 satellite data, including IMERG Early, Late, and Final products, for extreme precipitation in the Parnaíba River Basin from 2001 to 2020. A pixel point-to-point approach is used to compare the satellite estimates with observed precipitation data measured by rain gauges. Eight indices of extreme precipitation are analyzed, along with statistical measures such as bias, mean square error, root mean square error, probability of detection (POD), false alarm ratio (FAR), and the Kling-Gupta efficiency (KGE) index and its components. The results show that the IMERG Final estimates exhibit better agreement with in situ data at the daily scale compared to the IMERG Early and Late estimates. The lower Parnaíba region shows higher POD values, while the middle Parnaíba region exhibits higher KGE values, particularly in tropical climate areas. The IMERG products demonstrate different capabilities in observing extreme rainfall in the basin, with IMERG Final showing satisfactory results for 50 % of the analyzed indices, performing more robustly in capturing the PRCPTOT index and reasonably for CDD, RX5day, and R95p. We conclude that the IMERG Final product can be used as a data source for analyzing precipitation extremes in the Parnaíba River Basin, with bias adjustment recommended for better performance at the daily scale.
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spelling doaj.art-ebaf861286094e0eb07934802cb5e5812024-02-28T05:13:18ZengElsevierWeather and Climate Extremes2212-09472024-03-0143100646Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 productsFlávia Ferreira Batista0Daniele Tôrres Rodrigues1Cláudio Moisés Santos e Silva2Graduate Program in Climate Sciences, Department of Climate and Atmospheric Sciences, Federal University of Rio Grande do Norte, Av. Prof. Senador Salgado Filho 3000, Lagoa Nova, Natal, 59078-970, Brazil; Federal Institute of Espírito Santo (IFES), Campus Barra de São Francisco, Rodovia ES 320 - KM 118 - Zona Rural, Barra de São Francisco, ES, Brazil; Corresponding author. Graduate Program in Climate Sciences, Department of Climate and Atmospheric Sciences, Federal University of Rio Grande do Norte, Av. Prof. Senador Salgado Filho 3000, Lagoa Nova, Natal, 59078-970, Brazil.Department of Atmospheric and Climate Sciences, Federal University of Rio Grande do Norte, Av. Prof. Senador Salgado Filho 3000, Lagoa Nova, Natal, 59078-970, Brazil; Department of Statistics, Federal University of Piauí, Av. Prof. Minister Petrônio Portella University Campus, Ininga, Teresina, 64049-550, BrazilGraduate Program in Climate Sciences, Department of Climate and Atmospheric Sciences, Federal University of Rio Grande do Norte, Av. Prof. Senador Salgado Filho 3000, Lagoa Nova, Natal, 59078-970, Brazil; Department of Atmospheric and Climate Sciences, Federal University of Rio Grande do Norte, Av. Prof. Senador Salgado Filho 3000, Lagoa Nova, Natal, 59078-970, BrazilSatellite products, such as the Integrated Multi-Satellite Retrievals of IMERG from the Global Precipitation Measurement (GPM) mission, have emerged as promising tools to analyze precipitation distribution and extremes, particularly in regions with low rain gauge density and sparse distribution, such as Brazil. However, regional validation of satellite data is crucial. In this context, the validation of GPM (IMERG) for the Parnaíba River Basin in northeastern Brazil is important due to its high hydrological potential and the presence of one of the largest expanding agricultural frontiers in the world. This study evaluates the estimation capacity of IMERG version 6 satellite data, including IMERG Early, Late, and Final products, for extreme precipitation in the Parnaíba River Basin from 2001 to 2020. A pixel point-to-point approach is used to compare the satellite estimates with observed precipitation data measured by rain gauges. Eight indices of extreme precipitation are analyzed, along with statistical measures such as bias, mean square error, root mean square error, probability of detection (POD), false alarm ratio (FAR), and the Kling-Gupta efficiency (KGE) index and its components. The results show that the IMERG Final estimates exhibit better agreement with in situ data at the daily scale compared to the IMERG Early and Late estimates. The lower Parnaíba region shows higher POD values, while the middle Parnaíba region exhibits higher KGE values, particularly in tropical climate areas. The IMERG products demonstrate different capabilities in observing extreme rainfall in the basin, with IMERG Final showing satisfactory results for 50 % of the analyzed indices, performing more robustly in capturing the PRCPTOT index and reasonably for CDD, RX5day, and R95p. We conclude that the IMERG Final product can be used as a data source for analyzing precipitation extremes in the Parnaíba River Basin, with bias adjustment recommended for better performance at the daily scale.http://www.sciencedirect.com/science/article/pii/S2212094724000070Precipitation extremesIMERGPerformance evaluationParnaíba River Basin
spellingShingle Flávia Ferreira Batista
Daniele Tôrres Rodrigues
Cláudio Moisés Santos e Silva
Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
Weather and Climate Extremes
Precipitation extremes
IMERG
Performance evaluation
Parnaíba River Basin
title Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
title_full Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
title_fullStr Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
title_full_unstemmed Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
title_short Analysis of climatic extremes in the Parnaíba River Basin, Northeast Brazil, using GPM IMERG-V6 products
title_sort analysis of climatic extremes in the parnaiba river basin northeast brazil using gpm imerg v6 products
topic Precipitation extremes
IMERG
Performance evaluation
Parnaíba River Basin
url http://www.sciencedirect.com/science/article/pii/S2212094724000070
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