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Modeling multidecadal surface water inundation dynamics and key drivers on large river basin scale using multiple time series of Earth-observation and river flow data

机译:使用多个时间序列的地球观测和河流流量数据对大型流域尺度上的数十年地表水淹没动力学和关键驱动因素进行建模

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Periodically inundated floodplain areas are hot spots of biodiversity and provide a broad range of ecosystem services but have suffered alarming declines in recent history. Despite their importance, their long-term surface water (SW) dynamics and hydroclimatic drivers remain poorly quantified on continental scales. In this study, we used a 26 year time series of Landsat-derived SW maps in combination with river flow data from 68 gauges and spatial time series of rainfall, evapotranspiration and soil moisture to statistically model SW dynamics as a function of key drivers across Australia's Murray-Darling Basin (approximate to 1 million km(2)). We fitted generalized additive models for 18,521 individual modeling units made up of 10 x 10 km grid cells, each split into floodplain, floodplain-lake, and nonfloodplain area. Average goodness of fit of models was high across floodplains and floodplain-lakes (r(2)>0.65), which were primarily driven by river flow, and was lower for nonfloodplain areas (r(2)>0.24), which were primarily driven by rainfall. Local climate conditions were more relevant for SW dynamics in the northern compared to the southern basin and had the highest influence in the least regulated and most extended floodplains. We further applied the models of two contrasting floodplain areas to predict SW extents of cloud-affected time steps in the Landsat series during the large 2010 floods with high validated accuracy (r(2)>0.97). Our framework is applicable to other complex river basins across the world and enables a more detailed quantification of large floods and drivers of SW dynamics compared to existing methods.
机译:洪泛区定期被淹没是生物多样性的热点,并提供了广泛的生态系统服务,但在最近的历史中遭受了令人震惊的下降。尽管它们很重要,但它们长期的地表水(SW)动力学和水文气候驱动因素在大陆尺度上仍然很难量化。在这项研究中,我们使用了Landsat衍生的西南地区地图的26年时间序列,结合68个轨距的河流流量数据以及降雨,蒸散和土壤湿度的空间时间序列,以统计学方式对西南地区的动力学模型进行了建模,并将其作为澳大利亚主要驱动力的函数。默里-达令盆地(约100万公里(2))。我们为由18 x 10 km网格单元组成的18,521个单独的建模单元装配了广义加性模型,每个单元划分为洪泛区,洪泛湖区和非洪泛区。洪泛区和漫滩湖模型的平均拟合优度较高(r(2)> 0.65),这主要是由河流流量驱动的;非洪泛区则较低(r(2)> 0.24),这主要是由河流驱动的根据降雨。与南部盆地相比,北部北部的局部气候条件与西南部动力学更为相关,并且在管制最少,延伸最广的洪泛区中影响最大。我们进一步应用了两个形成对比的洪泛区模型,以较高的精度(r(2)> 0.97)来预测2010年大洪水期间Landsat系列中受云影响的时间步长的西南范围。我们的框架适用于全球其他复杂的流域,并且与现有方法相比,可以更详细地量化大洪水和西南动力学的驱动因素。

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