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An Assessment of Surface Water Detection Methods for Water Resource Management in the Nigerien Sahel

机译:尼日尔萨赫勒地区水资源管理中地表水探测方法的评估

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摘要

Water is a scarce, but essential resource in the Sahel. Rainfed ephemeral ponds and lakes that dot the landscape are necessary to the livelihoods of smallholder farmers and pastoralists who rely on these resources to irrigate crops and hydrate cattle. The remote location and dispersed nature of these water bodies limits typical methods of monitoring, such as with gauges; fortunately, remote sensing offers a quick and cost-effective means of regularly measuring surface water extent in these isolated regions. Dozens of operational methods exist to use remote sensing to identify waterbodies, however, their performance when identifying surface water in the semi-arid Sahel has not been well-documented and the limitations of these methods for the region are not well understood. Here, we evaluate two global dynamic surface water datasets, fifteen spectral indices developed to classify surface water extent, and three simple decision tree methods created specifically to identify surface water in semi-arid environments. We find that the existing global surface water datasets effectively minimize false positives, but greatly underestimate the presence and extent of smaller, more turbid water bodies that are essential to local livelihoods, an important limitation in their use for monitoring water availability. Three of fifteen spectral indices exhibited both high accuracy and threshold stability when evaluated over different areas and seasons. The three simple decision tree methods had mixed performance, with only one having an overall accuracy that compared to the best performing spectral indices. We find that while global surface water datasets may be appropriate for analysis at the global scale, other methods calibrated to the local environment may provide improved performance for more localized water monitoring needs.
机译:水是萨赫勒地区的一种稀缺但必不可少的资源。散布着风景的雨养临时池塘和湖泊对于依靠这些资源灌溉农作物和给牲畜补水的小农和牧民来说是必不可少的。这些水体的地理位置偏远且分散,限制了典型的监测方法,例如使用水表;幸运的是,遥感技术提供了一种快速且经济高效的方法,可以定期测量这些偏远地区的地表水范围。存在数十种使用遥感来识别水体的操作方法,但是,在识别半干旱萨赫勒地区的地表水时它们的性能尚未得到充分记录,并且这些方法在该地区的局限性还没有得到很好的理解。在这里,我们评估了两个全局动态地表水数据集,开发了十五个光谱指数来对地表水范围进行分类,并创建了三种简单的决策树方法,专门用于识别半干旱环境中的地表水。我们发现,现有的全球地表水数据集有效地减少了误报率,但大大低估了对当地生计至关重要的更小,更浑浊的水体的存在和程度,这是其用于监测水可利用性的重要限制。在不同地区和季节进行评估时,十五个光谱指数中的三个显示了很高的准确性和阈值稳定性。三种简单的决策树方法具有混合性能,只有一种具有与最佳性能光谱指数相比的整体准确性。我们发现,尽管全球地表水数据集可能适合于在全球范围内进行分析,但已针对当地环境进行校准的其他方法可能会为满足更局部的水监测需求提供改进的性能。

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