地下水
环境科学
植被(病理学)
水文学(农业)
河岸带
土壤水分
蒸腾作用
水循环
干旱
降水
含水量
地质学
土壤科学
生态学
地理
气象学
生物
岩土工程
医学
病理
栖息地
植物
光合作用
古生物学
作者
Gonzalo Miguez‐Macho,Ying Fan
标识
DOI:10.5194/egusphere-egu22-10789
摘要
<p>Vegetation modulates Earth&#8217;s water, energy and carbon cycles and provides a key link between water stores in the deep soil and the atmosphere. How its functions may change in the future largely depends on how it copes with droughts. There is evidence that in places-times of drought, vegetation shifts water uptake to deeper soil and rock moisture and groundwater. We differentiate and assess plant use of four types of water source: precipitation (P) in current month, past P stored in deeper unsaturated soils/rocks, past P stored in locally recharged groundwater, and groundwater from P fallen on uplands via river-groundwater convergence toward lowlands. We examine global and seasonal patterns and drivers in plant uptake of the four sources using inverse modeling and isotope-based estimates. We find that globally and annually, 70% (std 24%) of plant transpiration relies on current month P, 18% (std 15%) on deep soil moisture, only 1% (std 3%) on locally recharged groundwater, and 10% (std 22%) on groundwater or river water from upland more distant sources; (2) regionally and seasonally, recent P is only 19% in semi-arid, 32% in Mediterranean, and 17% in winter-dry tropics in the driest months; (3) at landscape scales, deep soil moisture, taken up by deep roots in the deep vadose zone, is critical in uplands in dry months, but groundwater and river water from uplands is up to 47% in valleys where riparian forests and desert oases are found. Because the four sources originate from different places-times, move at different spatial-temporal scales, and respond with different sensitivity to climate and anthropogenic forces, understanding space-time origin of plant water source can inform ecosystem management and Earth System Models on the critical hydrologic pathways linking precipitation to vegetation.</p>
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