2021
DOI: 10.3390/rs13071275
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Evaluation and Comparison of Satellite-Derived Estimates of Rainfall in the Diverse Climate and Terrain of Central and Northeastern Ethiopia

Abstract: Understanding rainfall processes as the main driver of the hydrological cycle is important for formulating future water management strategies; however, rainfall data availability is challenging for countries such as Ethiopia. This study aims to evaluate and compare the satellite rainfall estimates (SREs) derived from tropical rainfall measuring mission (TRMM 3B43v7), rainfall estimation from remotely sensed information using artificial neural networks—climate data record (PERSIANN-CDR), merged satellite-gauge … Show more

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Cited by 13 publications
(5 citation statements)
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“…Overall, both good correlation (CC) and fit between the datasets (KGE) were shown by the IMERG product further being proved by Adane et al [78] from a similar study done in Northeastern Ethiopia. Poor correlation was mainly showcased by PERSIANN-CDR product.…”
Section: Continuous Evaluation Indicessupporting
confidence: 53%
“…Overall, both good correlation (CC) and fit between the datasets (KGE) were shown by the IMERG product further being proved by Adane et al [78] from a similar study done in Northeastern Ethiopia. Poor correlation was mainly showcased by PERSIANN-CDR product.…”
Section: Continuous Evaluation Indicessupporting
confidence: 53%
“…Monitoring such inconsistencies of rainfall in a geographic region and over long-term periods could present a significant challenge, especially with inadequate data (Dinku, 2019;Dieulin et al, 2019) for spatiotemporal variability analysis. The lack of widespread ancillary rainfall data from ground meteorological stations on a scale of regular time intervals would significantly hinder meaningful spatiotemporal rainfall analysis (Le et al, 2020;Adane et al, 2021;Zhang et al, 2022). However, the proliferation of satellite-based sensors in recent years and the advent of geographic Information Systems (GIS) have resolved this bottleneck (Singh et al, 2022;Gosset et al, 2023).…”
Section: Introductionmentioning
confidence: 99%
“…Thus, improved spatial precipitation estimates can minimize the uncertainties in recharge estimations. The availability of improved spatial precipitation data, such as those obtained through radar, rain gauge observations, satellite observations, and reanalysis products, is increasing significantly [ 13 , 14 ]. The importance of using satellite rainfall products for minimizing hydrological modeling errors has been assessed in previous studies [ 15 , 16 ].…”
Section: Introductionmentioning
confidence: 99%