Abstract:
Purpose– The purpose of this study is to address a highly heterogeneous rift margin environment and exhibit considerable spatiotemporal hydro-climatic
variations. In spite of limited, random and inaccurate data retrieved from rainfall gauging stations, the recent advancement of satellite rainfall estimate
(SRE) has provided promising alternatives over such remote areas. The aim of this research is to take advantage of the technologies through performance
evaluation of the SREs against ground-based-gauge rainfall data sets by incorporating its applicability in calibrating hydrological models.
Design/methodology/approach– Selected multi satellite-based rainfall estimates were primarily compared statistically with rain gauge
observations using a point-to-pixel approach at different time scales (daily and seasonal). The continuous and categorical indices are used to
evaluate the performance of SRE. The simple scaling time-variant bias correction method was further applied to remove the systematic error in
satellite rainfall estimates before being used as input for a semi-distributed hydrologic engineering center’s hydraulic modeling system (HEC-HMS).
Runoff calibration and validation were conducted for consecutive periods ranging from 1999–2010 to 2011–2015, respectively.
Findings– The spatial patterns retrieved from climate hazards group infrared precipitation with stations (CHIRPS), multi-source weighted-ensemble
precipitation (MSWEP) and tropical rainfall measuring mission (TRMM) rainfall estimates are more or less comparably underestimate the ground
based gauge observation at daily and seasonal scales. In comparison to the others, MSWEP has the best probability of detection followed by TRMM
at all observation stations whereas CHIRPS performs the least in the study area. Accordingly, the relative calibration performance of the hydrological
model (HEC-HMS) using ground-based gauge observation (Nash and Sutcliffe efficiency criteria [NSE] = 0.71; R2 = 0.72) is better as compared to
MSWEP(NSE =0.69; R2 = 0.7), TRMM (NSE = 0.67, R2 = 0.68) and CHIRPS (NSE = 0.58 and R2 = 0.62).
Practical implications– Calibration of hydrological model using the satellite rainfall estimate products have promising results. The results also
suggest that products can be a potential alternative source of data sparse complex rift margin having heterogeneous characteristics for various
water resource related applications in the study area.
Originality/value– This research is an original work that focuses on all three satellite rainfall estimates forced simulations displaying substantially
improved performance after bias correction and recalibration.