可比性
数据科学
样品(材料)
计算机科学
航程(航空)
环境科学
数据挖掘
水文学(农业)
地质学
数学
工程类
色谱法
组合数学
航空航天工程
化学
岩土工程
作者
Nans Addor,Hong Xuan,Camila Álvarez-Garretón,Gemma Coxon,Keirnan Fowler,Pablo A. Mendoza
标识
DOI:10.1080/02626667.2019.1683182
摘要
Large-sample hydrology (LSH) relies on data from large sets (tens to thousands) of catchments to go beyond individual case studies and derive robust conclusions on hydrological processes and models. Numerous LSH datasets have recently been released, covering a wide range of regions and relying on increasingly diverse data sources to characterize catchment behaviour. These datasets offer novel opportunities, yet they are also limited by their lack of comparability, uncertainty estimates and characterization of human impacts. This article (i) underscores the key role of LSH datasets in hydrological studies, (ii) provides a review of currently available LSH datasets, (iii) highlights current limitations of LSH datasets and (iv) proposes guidelines and coordinated actions to overcome these limitations. These guidelines and actions aim to standardize and automatize the creation of LSH datasets worldwide, and to enhance the reproducibility and comparability of hydrological studies.
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