Spatio-temporal evaluation of remote sensing rainfall data of TRMM satellite over the Kingdom of Saudi Arabia

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作者
Sajjad Hussain
Amro M. Elfeki
Anis Chaabani
Esubalew Adem Yibrie
Mohamed Elhag
机构
[1] King Abdulaziz University,Department of Hydrology and Water Resources Management, Faculty of Meteorology, Environment & Arid Land Agriculture
[2] Mansoura University,Irrigation and Hydraulics Department, Faculty of Engineering
[3] CI-HEAM/Mediterranean Agronomic Institute of Chania,Department of Geoinformation in Environmental Management
[4] Chinese Academy of Science (CAS),The State Key Laboratory of Remote Sensing, Aerospace Information Research Institute
[5] the German University of Technology in Oman,Department of Applied Geosciences, Faculty of Science
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摘要
Rainfall estimation is the most important parameter for many water resource simulations and practices; therefore, precise and long-term data are required for trustworthy precipitation depiction. Recent advancements in remote sensing applications enabled researchers to estimate rainfall with greater geographical and temporal precision. The goal of this study was to evaluate the performance of a climatological satellite, the Tropical Rainfall Measuring Mission (TRMM) in estimating rainfall, with ground-based gauge data for five years (2008–2012) across the entire Kingdom of Saudi Arabia (KSA). In regional and station-based evaluations, many statistical performance metrics such as R-square (R2), root-mean-squared error (RMSE), mean absolute error (MAE), relative BIAS (R.B.), and correlation coefficient (CC) have been utilized. The southern, north-western, and south-western areas performed very well in the regression and correlation analyses. The problem of under and overestimating satellite data, according to R.B. analysis, exists across the Kingdom, with the southern, eastern, and north-western areas dominating (maximum over is R.B. = 94.6% and minimum over is 7.5%, while maximum under R.B. =  − 52.8% and minimum under R.B. =  − 5.9%). The RMSE and MAE were higher in the Qassim, Jazan, and Makkah regions, whereas they were the lowest in the northwestern. In general, TRMM prominently identified rainfall in comparison with the ground-based data and performed moderately for the majority of stations and regions during the research period.
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页码:363 / 377
页数:14
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