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عنوان
Bias adjustment of satellite-based precipitation estimation using artificial neural networks-cloud classification system over Saudi Arabia
پدید آورنده
Alharbi, RHsu, KSorooshian, S
موضوع
رده
کتابخانه
Center and Library of Islamic Studies in European Languages
محل استقرار
استان:
Qom
ـ شهر:
Qom
تماس با کتابخانه :
32910706
-
025
NATIONAL BIBLIOGRAPHY NUMBER
Number
LA3k03g8fp
TITLE AND STATEMENT OF RESPONSIBILITY
Title Proper
Bias adjustment of satellite-based precipitation estimation using artificial neural networks-cloud classification system over Saudi Arabia
General Material Designation
[Article]
First Statement of Responsibility
Alharbi, RHsu, KSorooshian, S
SUMMARY OR ABSTRACT
Text of Note
© 2018, Saudi Society for Geosciences. Precipitation is a key input variable for hydrological and climate studies. Rain gauges can provide reliable precipitation measurements at a point of observations. However, the uncertainty of rain measurements increases when a rain gauge network is sparse. Satellite-based precipitation estimations SPEs appear to be an alternative source of measurements for regions with limited rain gauges. However, the systematic bias from satellite precipitation estimation should be estimated and adjusted. In this study, a method of removing the bias from the precipitation estimation from remotely sensed information using artificial neural networks-cloud classification system (PERSIANN-CCS) over a region where the rain gauge is sparse is investigated. The method consists of monthly empirical quantile mapping of gauge and satellite measurements over several climate zones as well as inverse-weighted distance for the interpolation of gauge measurements. Seven years (2010-2016) of daily precipitation estimation from PERSIANN-CCS was used to test and adjust the bias of estimation over Saudi Arabia. The first 6 years (2010-2015) are used for calibration, while 1 year (2016) is used for validation. The results show that the mean yearly bias is reduced by 90%, and the yearly root mean square error is reduced by 68% during the validation year. The experimental results confirm that the proposed method can effectively adjust the bias of satellite-based precipitation estimations.
SET
Date of Publication
2018
Title
UC Irvine
ELECTRONIC LOCATION AND ACCESS
Electronic name
مطالعه متن کتاب
[Article]
278021
a
Y
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