Potential of rainfall data hybridization in a data-scarce region

Many impact assessment studies have been using reanalysis precipitation data as an alternative to observed rainfall data even where few rainfall records are available. For that reason, this study investigated fit-to-observations and fit-for-purpose of hybrid rainfall data using four strategically lo...

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Main Author: Frank Joseph Wambura
Format: Article
Language:English
Published: Elsevier 2020-07-01
Series:Scientific African
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2468227620301873
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spelling doaj-e98adbe5183c4566b274e508f680d54c2020-11-25T02:31:35ZengElsevierScientific African2468-22762020-07-018e00449Potential of rainfall data hybridization in a data-scarce regionFrank Joseph Wambura0Department of Urban and Regional Planning, Ardhi University, Dar es Salaam, TanzaniaMany impact assessment studies have been using reanalysis precipitation data as an alternative to observed rainfall data even where few rainfall records are available. For that reason, this study investigated fit-to-observations and fit-for-purpose of hybrid rainfall data using four strategically located rainfall stations in the Wami-Ruvu basin, Tanzania. Hybrid rainfall data were generated by randomly filling 15% to 70% hypothetical missing data in the observed records at the rainfall stations with reanalysis precipitation data from nearby grids. Fit-to-observations was used to evaluate the performance of the whole time series of hybrid rainfall data in mimicking that of observed rainfall data at the stations. Fit-for-purpose was used to evaluate the performance of trend and seasonal components of the whole time series of hybrid rainfall data in mimicking those of the whole time series of observed rainfall data at the stations. The findings showed that hybrid rainfall data are superior to reanalysis precipitation data in mimicking observed rainfall data. The findings also revealed that in most cases, trend and seasonal components have greater performances than the whole time series at high degrees of hybridization. Therefore, hybridization of rainfall data is highly encouraged especially in data-scarce regions.http://www.sciencedirect.com/science/article/pii/S2468227620301873Data scarcityFit-for-purposeFit-to-observationsHybrid rainfallReanalysis precipitationWami-Ruvu basin
collection DOAJ
language English
format Article
sources DOAJ
author Frank Joseph Wambura
spellingShingle Frank Joseph Wambura
Potential of rainfall data hybridization in a data-scarce region
Scientific African
Data scarcity
Fit-for-purpose
Fit-to-observations
Hybrid rainfall
Reanalysis precipitation
Wami-Ruvu basin
author_facet Frank Joseph Wambura
author_sort Frank Joseph Wambura
title Potential of rainfall data hybridization in a data-scarce region
title_short Potential of rainfall data hybridization in a data-scarce region
title_full Potential of rainfall data hybridization in a data-scarce region
title_fullStr Potential of rainfall data hybridization in a data-scarce region
title_full_unstemmed Potential of rainfall data hybridization in a data-scarce region
title_sort potential of rainfall data hybridization in a data-scarce region
publisher Elsevier
series Scientific African
issn 2468-2276
publishDate 2020-07-01
description Many impact assessment studies have been using reanalysis precipitation data as an alternative to observed rainfall data even where few rainfall records are available. For that reason, this study investigated fit-to-observations and fit-for-purpose of hybrid rainfall data using four strategically located rainfall stations in the Wami-Ruvu basin, Tanzania. Hybrid rainfall data were generated by randomly filling 15% to 70% hypothetical missing data in the observed records at the rainfall stations with reanalysis precipitation data from nearby grids. Fit-to-observations was used to evaluate the performance of the whole time series of hybrid rainfall data in mimicking that of observed rainfall data at the stations. Fit-for-purpose was used to evaluate the performance of trend and seasonal components of the whole time series of hybrid rainfall data in mimicking those of the whole time series of observed rainfall data at the stations. The findings showed that hybrid rainfall data are superior to reanalysis precipitation data in mimicking observed rainfall data. The findings also revealed that in most cases, trend and seasonal components have greater performances than the whole time series at high degrees of hybridization. Therefore, hybridization of rainfall data is highly encouraged especially in data-scarce regions.
topic Data scarcity
Fit-for-purpose
Fit-to-observations
Hybrid rainfall
Reanalysis precipitation
Wami-Ruvu basin
url http://www.sciencedirect.com/science/article/pii/S2468227620301873
work_keys_str_mv AT frankjosephwambura potentialofrainfalldatahybridizationinadatascarceregion
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