LamaH | Large-Sample Data for Hydrology and Environmental Sciences for Central Europe

Christoph Klingler, K. Schulz, M. Herrnegger
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引用次数: 12

Abstract

Abstract. Very large and comprehensive datasets are increasingly used in the field of hydrology. Large-sample studies provide insights into the hydrological cycle that might not be available with small-scale studies. LamaH (Large-Sample Data for Hydrology) is a new dataset for large-sample studies and comparative hydrology in Central Europe. It covers the entire upper Danube to the state border Austria/Slovakia, as well as all other Austrian catchments including their foreign upstream areas. LamaH covers an area of 170 000 km2 in 9 different countries, ranging from lowland regions characterized by a continental climate to high alpine zones dominated by snow and ice. Consequently, a wide diversity of properties is present in the individual catchments. We represent this variability in 859 observed catchments with over 60 catchment attributes, covering topography, climatology, hydrology, land cover, vegetation, soil and geological properties. LamaH further contains a collection of runoff time series as well as meteorological time series. These time series are provided with daily and also hourly resolution. All meteorological and the majority of runoff time series cover a span of over 35 years, which enables long-term analyses, also with a high temporal resolution. The runoff time series are classified by over 20 different attributes including information about human impacts and indicators for data quality and completeness. The structure of LamaH is based on the well-known CAMELS datasets. In contrast, however, LamaH does not only consider headwater basins. Intermediate catchments are also covered, allowing, for the first time within a hydrological large sample dataset, to consider the hydrological network and river topology in applications. We discuss not only the data basis and the methodology of data preparation, but also focus on possible limitations and uncertainties. Potential applications of LamaH are also outlined, since it is intended to serve as a uniform basis for further research. LamaH is available at https://doi.org/10.5281/zenodo.4525244 (Klingler et al., 2021).
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LamaH |中欧水文与环境科学大样本数据
摘要在水文学领域,越来越多地使用非常庞大和全面的数据集。大样本研究提供了对水文循环的深入了解,这可能是小规模研究无法提供的。LamaH (Large-Sample Data for Hydrology)是一个用于中欧大样本研究和比较水文的新数据集。它涵盖了整个多瑙河上游至奥地利/斯洛伐克国家边界,以及所有其他奥地利集水区,包括其国外上游地区。LamaH覆盖9个不同国家的17万平方公里面积,从以大陆性气候为特征的低地地区到以冰雪为主的高山地区。因此,在各个集水区存在着各种各样的属性。我们用859个观测到的集水区的60多个集水区属性来表示这种变异,包括地形、气候、水文、土地覆盖、植被、土壤和地质属性。LamaH还包含径流时间序列和气象时间序列的集合。这些时间序列提供每日和每小时的分辨率。所有气象和大部分径流时间序列的跨度超过35年,因此能够进行长期分析,也具有较高的时间分辨率。径流时间序列根据20多种不同的属性进行分类,包括人类影响信息和数据质量和完整性指标。LamaH的结构基于著名的camel数据集。然而,相比之下,LamaH并不仅仅考虑水源盆地。中间流域也被覆盖,允许,第一次在水文大样本数据集中,考虑应用中的水文网络和河流拓扑。我们不仅讨论了数据基础和数据准备的方法,而且还关注了可能的局限性和不确定性。本文还概述了LamaH的潜在应用,因为它的目的是作为进一步研究的统一基础。LamaH可在https://doi.org/10.5281/zenodo.4525244获得(Klingler et al., 2021)。
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