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Precision of raw and bias-adjusted satellite precipitation estimations (TRMM, IMERG, CMORPH, and PERSIANN) over extreme flood events: case study in Langat river basin, Malaysia

Eugene Zhen Xiang Soo, Wan Zurina Wan Jaafar, Sai Hin Lai, Faridah Othman, Ahmed El‐Shafie, Tanvir Islam, Prashant K. Srivastava, Hazlina Salehan Othman Hadi

2020Journal of Water and Climate Change24 citationsDOIOpen Access PDF

Abstract

Abstract Although satellite precipitation products (SPPs) increasingly provide an alternative means to ground-based observations, these estimations exhibit large systematic and random errors which may cause large uncertainties in hydrologic modeling. Three approaches of bias correction (BC), i.e. linear scaling (LS), local intensity scaling (LOCI), and power transformation (PT), were applied on four SPPs (TRMM, IMERG, CMORPH, and PERSIANN) during 2014/2015 extreme floods in Langat river basin, and the performance in terms of rainfall and streamflow were investigated. The results show that the original TRMM had a potential to predict the peak streamflow although CMORPH show the best performance in general. After performing BC, it is found that the LS-IMERG and LOCI-TRMM show the best performance at both rainfall and streamflow analysis. Generally, it is indicated that the current SPP estimations are still imperfect for any hydrological applications. Cross validation of different datasets is required to avoid the calibration effects of datasets.

Topics & Concepts

Environmental scienceStreamflowFlood mythPrecipitationClimatologySatelliteMeteorologyFlood forecastingGlobal Precipitation MeasurementDrainage basinGeologyGeographyEngineeringCartographyAerospace engineeringArchaeologyPrecipitation Measurement and AnalysisMeteorological Phenomena and SimulationsClimate variability and models
Precision of raw and bias-adjusted satellite precipitation estimations (TRMM, IMERG, CMORPH, and PERSIANN) over extreme flood events: case study in Langat river basin, Malaysia | Litcius