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The Lake-Catchment (LakeCat) Dataset: characterizing landscape features for lake basins within the conterminous USA

机译:湖泊集水量(LakeCat)数据集:描述美国本土湖盆的景观特征

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摘要

Natural and human-related landscape features influence the ecology and water quality of lakes. Summarizing these features in a hydrologically meaningful way is critical to understanding and managing lake ecosystems. Such summaries are often done by delineating watershed boundaries of individual lakes. However, many technical challenges are associated with delineating hundreds or thousands of lake watersheds at broad spatial extents. These challenges can limit the application of analyses and models to new, unsampled locations. We present the Lake-Catchment (LakeCat) Dataset () of watershed features for 378,088 lakes within the conterminous USA. We describe the methods we used to: 1) delineate lake catchments, 2) hydrologically connect nested lake catchments, and 3) generate several hundred watershed-level metrics that summarize both natural (e.g., soils, geology, climate, and land cover) and anthropogenic (e.g., urbanization, agriculture, and mines) features. We illustrate how this data set can be used with a random forest model to predict the probability of lake eutrophication by combining LakeCat with data from US Environmental Protection Agency’s National Lakes Assessment (NLA). This model correctly predicted the trophic state of 72% of NLA lakes, and we applied the model to predict the probability of eutrophication at 297,071 unsampled lakes across the conterminous USA. The large suite of LakeCat metrics could be used to improve analyses of lakes at broad spatial extents, improve the applicability of analyses to unsampled lakes, and ultimately improve the management of these important ecosystems.
机译:自然和与人有关的景观特征会影响湖泊的生态和水质。以有意义的水文方式总结这些特征对于理解和管理湖泊生态系统至关重要。这种总结通常是通过划定各个湖泊的分水岭边界来完成的。但是,许多技术挑战与在广阔的空间范围内描绘成百上千个湖泊流域有关。这些挑战可能会将分析和模型的应用限制在新的未采样位置。我们介绍了美国本土378,088个湖泊的流域特征的湖泊集水量(LakeCat)数据集()。我们描述了用于以下方面的方法:1)划定湖泊集水区; 2)在水文学上连接嵌套的湖泊集水区; 3)生成数百个流域级度量标准,概述自然(例如土壤,地质,气候和土地覆盖)以及人为因素(例如,城市化,农业和矿山)。我们将说明该数据集如何与随机森林模型一起使用,以通过将LakeCat与美国环境保护署国家湖泊评估(NLA)的数据相结合来预测湖泊富营养化的可能性。该模型正确地预测了72%的NLA湖泊的营养状态,并且我们将该模型应用于预测了整个美国297,071个未采样湖泊的富营养化可能性。大量的LakeCat度量标准可用于在广泛的空间范围内改善湖泊的分析,提高分析在未采样湖泊中的适用性,并最终改善对这些重要生态系统的管理。

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