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Untangling complex shallow groundwater dynamics in the floodplain wetlands of a southeastern U.S. coastal river

机译:美国东南沿海河流漫滩湿地的复杂浅层地下水动力学

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摘要

Understanding the hydrological functioning of tidally influenced floodplain forests is essential for advancing ecosystem protection and restoration goals in impacted systems. However, finding direct relationships between basic hydrological inputs and floodplain hydrology is hindered by complex interactions between surface water, groundwater, and atmospheric fluxes in a variably saturated matrix with heterogeneous soils, vegetation, and topography. Thus, an explanatory method for identifying common trends and causal factors is required. Dynamic factor analysis (DFA), a time series dimension reduction technique, models temporal variation in observed data as linear combinations of common trends, which represent unidentified common factors, and explanatory variables. In this work, DFA was applied to model water table elevation (WTE) in the floodplain of the Loxahatchee River (Florida, USA), where altered watershed hydrology has led to changing hydroperiod and salinity regimes and undesired vegetative changes in the floodplain forest. The technique proved to be a powerful tool for the study of interactions among 29 long-term, nonstationary hydrological time series (12 WTE series and 17 candidate explanatory variables). Regional groundwater circulation, surface water elevations, and spatially variable net local recharge (cumulative rainfall - cumulative evapotranspiration) were found to be the main factors explaining groundwater profiles. The relative importance of these factors was spatially related to floodplain elevation, distance from the river channel, and distance upstream from the river mouth. The resulting dynamic factor model (DFM) simulated the WTE time series well (overall coefficient of efficiency, C_(eff)= 0.91) and is useful for assessing management scenarios for ecosystem restoration and predicted sea level rise.
机译:了解潮汐影响的洪泛区森林的水文功能对于推进受影响系统中的生态系统保护和恢复目标至关重要。但是,由于地表水,地下水和具有不同土壤,植被和地形的可变饱和矩阵中的大气通量之间的复杂相互作用,阻碍了基本水文输入与洪泛区水文之间直接关系的发现。因此,需要一种用于识别共同趋势和因果关系的解释方法。动态因子分析(DFA)是一种时间序列降维技术,将观察到的数据的时间变化建模为共同趋势的线性组合,这些趋势代表未识别的共同因素和解释变量。在这项工作中,DFA被用于模拟Loxahatchee河(美国佛罗里达)的洪泛区的地下水位(WTE),那里流域水文学的变化导致水文周期和盐度制度的变化以及洪泛区森林的不良植被变化。实践证明,该技术是研究29个长期非平稳水文时间序列(12个WTE系列和17个候选解释变量)之间相互作用的有力工具。发现区域地下水循环,地表水高程和空间上可变的净局部补给量(累积降雨-累积蒸散量)是解释地下水剖面的主要因素。这些因素的相对重要性在空间上与洪泛区海拔,距河道的距离以及距河口上游的距离有关。生成的动态因子模型(DFM)很好地模拟了WTE时间序列(总效率系数C_(eff)= 0.91),对于评估生态系统恢复和预测海平面上升的管理方案很有用。

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  • 来源
    《Water resources research》 |2010年第8期|P.W08528.1-W08528.18|共18页
  • 作者单位

    Agricultural and Biological Engineering Department, University of Florida, 287 Frazier Rogers Hall, PO Box 110570 Gainesville, FL 32611-0570, USA;

    rnAgricultural and Biological Engineering Department, University of Florida, 287 Frazier Rogers Hall, PO Box 110570 Gainesville, FL 32611-0570, USA;

    rnDepartamento de Suelos y Riegos, Instituto Canario de Investigaciones Agrarias (ICIA), Tenerife, Spain Depanamento de Ingenieria, Produccion y Economia Agraria, Universidad de La Laguna, Ctra. Geneto, 2, 38200 La Laguna, Spain;

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