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Assessing the role of climate and resource management on groundwater dependent ecosystem changes in arid environments with the Landsat archive

机译:利用Landsat档案库评估气候和资源管理在干旱环境中依赖地下水的生态系统变化中的作用

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Groundwater dependent ecosystems (GDEs) rely on near-surface groundwater. These systems are receiving more attention with rising air temperature, prolonged drought, and where groundwater pumping captures natural groundwater discharge for anthropogenic use. Phreatophyte shrublands, meadows, and riparian areas are GDEs that provide critical habitat for many sensitive species, especially in arid and semi-arid environments. While GDEs are vital for ecosystem services and function, their long-term (i.e. similar to 30 years) spatial and temporal variability is poorly understood with respect to local and regional scale climate, groundwater, and rangeland management. In this work, we compute time series of NDVI derived from sensors of the Landsat TM, ETM +, and OLI lineage for assessing GDEs in a variety of land and water management contexts. Changes in vegetation vigor based on climate, groundwater availability, and land management in arid landscapes are detectable with Landsat. However, the effective quantification of these ecosystem changes can be undermined if changes in spectral bandwidths between different Landsat sensors introduce biases in derived vegetation indices, and if climate, and land and water management histories are not well understood. The objective of this work is to 1) use the Landsat 8 under-fly dataset to quantify differences in spectral reflectance and NDVI between Landsat 7 ETM + and Landsat 8 OLI for a range of vegetation communities in arid and semiarid regions of the southwestern United States, and 2) demonstrate the value of 30-year historical vegetation index and climate datasets for assessing GDEs. Specific study areas were chosen to represent a range of GDEs and environmental conditions important for three scenarios: baseline monitoring of vegetation and climate, riparian restoration, and groundwater level changes. Google's Earth Engine cloud computing and environmental monitoring platform is used to rapidly access and analyze the Landsat archive along with downscaled North American Land Data Assimilation System gridded meteorological data, which are used for both atmospheric correction and correlation analysis. Results from the cross-sensor comparison indicate a benefit from the application of a consistent atmospheric correction method, and that NDVI derived from Landsat 7 and 8 are very similar within the study area. Results from continuous Landsat time series analysis clearly illustrate that there are strong correlations between changes in vegetation vigor, precipitation, evaporative demand, depth to groundwater, and riparian restoration. Trends in summer NDVI associated with riparian restoration and groundwater level changes were found to be statistically significant, and interannual summer NDVI was found to be moderately correlated to interannual water-year precipitation for baseline study sites. Results clearly highlight the complementary relationship between water-year PPT, NDVI, and evaporative demand, and are consistent with regional vegetation index and complementary relationship studies. This work is supporting land and water managers for evaluation of GDEs with respect to climate, groundwater, and resource management. (C) 2016 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY license.
机译:依赖地下水的生态系统(GDE)依赖于近地表地下水。随着气温的升高,干旱的持续以及地下水的抽取,这些系统越来越受到人们的关注,在这些地方,地下水被捕获用于人为的天然地下水排放。藻类灌木丛,草地和河岸地区是GDE,它们为许多敏感物种提供了重要的栖息地,尤其是在干旱和半干旱环境中。尽管GDE对生态系统服务和功能至关重要,但对于地方和区域范围的气候,地下水和牧场管理,人们对GDE的长期(即类似于30年)时空变化知之甚少。在这项工作中,我们计算了从Landsat TM,ETM +和OLI谱系的传感器得出的NDVI的时间序列,以评估各种土地和水管理环境中的GDE。 Landsat可以检测到基于气候,地下水可利用性以及干旱景观中土地管理的植被活力变化。但是,如果不同Landsat传感器之间的光谱带宽变化在导出的植被指数中造成偏差,以及如果对气候以及土地和水管理历史了解得不够清楚,则可能会破坏对这些生态系统变化的有效量化。这项工作的目的是:1)使用Landsat 8飞行中数据集来量化Landsat 7 ETM +和Landsat 8 OLI在美国西南干旱和半干旱地区的一系列植被群落之间的光谱反射率和NDVI差异。和2)展示了30年历史植被指数和气候数据集对评估GDE的价值。选择了特定的研究区域来代表一系列GDEs和环境条件,这些条件对于以下三种情况很重要:植被和气候的基线监测,河岸恢复和地下水位变化。 Google的Earth Engine云计算和环境监控平台可用于快速访问和分析Landsat档案,以及缩小规模的北美土地数据同化系统网格化的气象数据,可用于大气校正和相关性分析。交叉传感器比较的结果表明,使用一致的大气校正方法会带来好处,并且从Landsat 7和Landsat 8得出的NDVI在研究区域内非常相似。 Landsat连续时间序列分析的结果清楚地表明,植被活力,降水,蒸发需求,地下水深度和河岸恢复之间的变化之间存在很强的相关性。夏季NDVI与河岸恢复和地下水位变化相关的趋势被发现具有统计学显着性,并且基线研究站点的年际夏季NDVI与年际水年降水有中等相关性。结果清楚地表明了水年PPT,NDVI和蒸发需求之间的互补关系,并且与区域植被指数和互补关系研究一致。这项工作正在支持土地和水管理者评估关于气候,地下水和资源管理的GDE。 (C)2016作者。由Elsevier Inc.发行。这是CC BY许可下的开放访问文章。

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