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Using MODIS data to characterize seasonal inundation patterns in the Florida Everglades

机译:使用MODIS数据表征佛罗里达大沼泽地的季节性淹没模式

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Information regarding the spatial extent and timing of flooding in the world's major wetlands is important to a wide range of research questions including global methane models, water management, and biodiversity assessments. The Florida Everglades is one of the largest wetlands in the US, and is subject to substantial development and pressures that require intensive hydrological modeling and monitoring. The Moderate Resolution Imaging Spectrometer (MODIS) is a global sensor with high frequency repeat coverage and significant potential for mapping wetland extent and dynamics at moderate spatial resolutions. In this study, empirical models to predict surface inundation in the Everglades were estimated using MODIS data calibrated to water stage data from the South Florida Water Management District for the calendar year 2004. The results show that hydropatterns in the Florida Everglades are strongly correlated to a Tasseled Cap wetness index derived from MODIS Nadir Bidirectional Reflectance Function Adjusted Reflectance data. Several indices were tested, including the Normalized Difference Wetness Index and the diurnal land surface temperature difference, but the Tasseled Cap wetness index showed the strongest correlation to water stage data across a range of surface vegetation types. Other variables included in the analysis were elevation and percent tree cover present within a pixel. Using logistic regression and ensemble regression trees, maps of water depth and flooding likelihood were produced for each 16-day MODIS data period in 2004. The results suggest that MODIS is useful for dynamic monitoring of flooding, particularly in wetlands with sparse tree cover. (C) 2008 Elsevier Inc. All rights reserved.
机译:有关世界主要湿地洪水泛滥的时间和范围的信息对于包括全球甲烷模型,水管理和生物多样性评估在内的广泛研究问题都很重要。佛罗里达大沼泽地是美国最大的湿地之一,承受着巨大的发展和压力,需要进行密集的水文建模和监测。中分辨率成像光谱仪(MODIS)是一种全球传感器,具有高频重复覆盖范围,并具有以中等空间分辨率绘制湿地范围和动态的巨大潜力。在这项研究中,使用MODIS数据对2004年日历年的南佛罗里达水管理区的水位数据进行了校准,从而估算了预测大沼泽地表水淹没的经验模型。结果表明,佛罗里达大沼泽地的水文模式与一个从MODIS Nadir双向反射率函数调整后的反射率数据得出的流苏盖湿度指数。测试了多个指标,包括归一化差异湿润指数和昼夜地表温度差异,但是流苏帽湿度指数显示了与一系列表层植被类型中水位数据的最强相关性。分析中包括的其他变量是像素内的高程和树木覆盖率。使用logistic回归树和集合回归树,在2004年的每个16天MODIS数据周期内绘制了水深和洪水可能性的地图。结果表明MODIS可用于动态监测洪水,特别是在树木稀疏的湿地中。 (C)2008 Elsevier Inc.保留所有权利。

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