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Monitoring Hydrological Patterns of Temporary Lakes Using Remote Sensing and Machine Learning Models: Case Study of La Mancha Húmeda Biosphere Reserve in Central Spain

机译:利用遥感和机器学习模型监测临时湖的水文模式:以西班牙中部拉曼恰·胡梅达生物圈保护区为例

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The Biosphere Reserve of La Mancha Húmeda is a wetland-rich area located in central Spain. This reserve comprises a set of temporary lakes, often saline, where water level fluctuates seasonally. Water inflows come mainly from direct precipitation and runoff of small lake watersheds. Most of these lakes lack surface outlets and behave as endorheic systems, where water withdrawal is mainly due to evaporation, causing salt accumulation in the lake beds. Remote sensing was used to estimate the temporal variation of the flooded area in these lakes and their associated hydrological patterns related to the seasonality of precipitation and evapotranspiration. Landsat 7 ETM+ satellite images for the reference period 2013–2015 were jointly used with ground-truth datasets. Several inverse modeling methods, such as two-band and multispectral indices, single-band threshold, classification methods, artificial neural network, support vector machine and genetic programming, were applied to retrieve information on the variation of the flooded areas. Results were compared to ground-truth data, and the classification errors were evaluated by means of the kappa coefficient. Comparative analyses demonstrated that the genetic programming approach yielded the best results, with a kappa value of 0.98 and a total error of omission-commission of 2%. The dependence of the variations in the water-covered area on precipitation and evaporation was also investigated. The results show the potential of the tested techniques to monitor the hydrological patterns of temporary lakes in semiarid areas, which might be useful for management strategy-linked lake conservation and specifically to accomplish the goals of both the European Water Framework Directive and the Habitats Directive.
机译:La ManchaHúmeda生物圈保护区是西班牙中部一个湿地丰富的地区。该保护区包括一组临时湖,通常为盐湖,水位随季节变化。流入水主要来自小湖流域的直接降水和径流。这些湖泊大多数缺乏地表出口,并且表现为内分泌系统,其中的取水主要是由于蒸发,导致盐在湖床中积聚。遥感技术被用来估算这些湖泊中洪灾区的时间变化及其与降雨和蒸散季节有关的水文模式。将2013-2015年参考期的Landsat 7 ETM +卫星图像与地面真实数据集一起使用。应用了几种反建模方法,例如两波段和多光谱指数,单波段阈值,分类方法,人工神经网络,支持向量机和遗传规划,来检索有关洪水区域变化的信息。将结果与真实数据进行比较,并通过kappa系数评估分类误差。比较分析表明,遗传程序设计方法产生了最佳结果,kappa值为0.98,遗漏-委托的总误差为2%。还研究了水覆盖面积变化对降水和蒸发的依赖性。结果表明,经过测试的技术具有监测半干旱地区临时湖泊水文模式的潜力,这可能对与管理策略相关的湖泊保护非常有用,尤其是可以实现《欧洲水框架指令》和《人居指令》的目标。

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