A remote sensing solution for estimating runoff and recharge in arid environments

被引:121
|
作者
Milewski, Adam [1 ]
Sultan, Mohamed [1 ]
Yan, Eugene [2 ]
Becker, Richard [1 ]
Abdeldayem, Ahmed [3 ]
Soliman, Farouk [4 ]
Gelil, Kamil Abdel [5 ]
机构
[1] Western Michigan Univ, Dept Geosci, Kalamazoo, MI 49008 USA
[2] Argonne Natl Lab, Div Environm Sci, Chicago, IL USA
[3] Cairo Univ, Dept Hydraul & Engn, Cairo, Egypt
[4] Suez Canal Univ, Dept Geol, Ismailia, Egypt
[5] Natl Water Resource Ctr, Minist Water Resources & Irrigat, Cairo, Egypt
基金
美国国家科学基金会;
关键词
SWAT; Continuous rainfall-runoff model; Eastern Desert; Sinai peninsula; Remote sensing; GIs; GROUNDWATER RECHARGE; TRANSMISSION LOSSES; EASTERN DESERT; SOIL-MOISTURE; WATER; RAINFALL; MODEL; BALANCE; WADI; CALIBRATION;
D O I
10.1016/j.jhydrol.2009.04.002
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Efforts to understand and to quantify precipitation and its partitioning into runoff evapo-transpiration, and icecharge are often hampered by the absence or paucity of appropriate monitoring systems. We applied methodologies for rainfall-runoff and groundwater recharge computations that heavily rely on observations extracted from a wide-range of global remote sensing data sets (TRMM, SSM/l, Landsat TM, AVHRR, AMSR-E, and ASTER) using the arid Sinai Peninsula (SP; area: 61,000 km(2)) and the Eastern Desert (ED; area: 220,000 km(2)) of Egypt as our test sites. A two-fold exercise was conducted. Spatiotemporal remote sensing data (TRMM, AVHRR and AMSR-E) were extracted from global data sets over the test sites using RESDEM, the Remote Sensing Data Extraction Model, and were then used to identify and to verify precipitation events throughout the past 10 years (1998-2007). This was accomplished by using an automated cloud detection technique to identify clouds and to monitor their propagation prior to and throughout the identified precipitation events, and by examining changes in soil moisture (extracted from AMSR-E data) following the identification of clouds. For the investigated period, 246 of 327 events were verified in the SP, and 179 of 304 in the ED. A catchment-based, continuous, semi-distributed hydrologic model (Soil Water and Assessment Tool model; SWAT) was calibrated against observed runoff values from Wadi Girafi Watershed (area: 3350 km(2)) and then used to provide a continuous simulation (1998-2007) of the overland flow, channel flow, transmission losses, evaporation on bare soils and evapo-transpiration, and groundwater recharge for the major (area: 2014-22,030 km(2)) watersheds in the SP (Watir, El-Arish, Dahab, and Awag) and the ED (Qena, Hammamat, Asyuti, Tarfa, El-Quffa, El-Batur, Kharit, Hodein, and Allaqi) covering 48% and 51% of the total areas of the SP and the ED, respectively. For the investigated watersheds in the SP, the average annual precipitation, average annual runoff, and average annual recharge through transmission losses were found to be: 2955 x 10(6)m(3), 508 x 10(6)m(3) (17.1% total precipitation (TP)), and 463 x 10(6)m(3) (15.7% TP), respectively, whereas in the ED these values are: 807 x 10(6)m(3), 77.8 x 10(6)m(3) (9.6% TP), and 171 x 10(6)m(3) (21.2% TP), respectively. Results demonstrate the enhanced opportunities for groundwater development in the SP (compared to the ED) and highlight the potential for similar applications in and areas elsewhere. The adopted remote sensing-based, regionalization approach is not a substitute for traditional methodologies that rely on extensive field datasets from rain gauge and stream flow networks, yet could provide first-order estimates for rainfall, runoff, and recharge over large sectors of the and world lacking adequate coverage with spatial and temporal precipitation and field data. (C) 2009 Elsevier B.V. All rights reserved.
引用
收藏
页码:1 / 14
页数:14
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