Feature-based Groundwater Hydrograph Clustering Using Unsupervised Self-Organizing Map-Ensembles

被引:13
|
作者
Wunsch, Andreas [1 ]
Liesch, Tanja [1 ]
Broda, Stefan [2 ]
机构
[1] Karlsruhe Inst Technol KIT, Inst Appl Geosci, Div Hydrogeol, Kaiserstr 12, D-76131 Karlsruhe, Germany
[2] Fed Inst Geosci & Nat Resources BGR, Wilhelmstr 25-30, D-13593 Berlin, Germany
关键词
Groundwater-Dynamics; Time series clustering; Machine learning; Self-organizing maps (SOM); Ensemble modeling; Feature clustering; SOM NEURAL-NETWORK; K-MEANS; CLASSIFICATION; STREAMFLOW;
D O I
10.1007/s11269-021-03006-y
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Hydrograph clustering helps to identify dynamic patterns within aquifers systems, an important foundation of characterizing groundwater systems and their influences, which is necessary to effectively manage groundwater resources. We develope an unsupervised modeling approach to characterize and cluster hydrographs on regional scale according to their dynamics. We apply feature-based clustering to improve the exploitation of heterogeneous datasets, explore the usefulness of existing features and propose new features specifically useful to describe groundwater hydrographs. The clustering itself is based on a powerful combination of Self-Organizing Maps with a modified DS2L-Algorithm, which automatically derives the cluster number but also allows to influence the level of detail of the clustering. We further develop a framework that combines these methods with ensemble modeling, internal cluster validation indices, resampling and consensus voting to finally obtain a robust clustering result and remove arbitrariness from the feature selection process. Further we propose a measure to sort hydrographs within clusters, useful for both interpretability and visualization. We test the framework with weekly data from the Upper Rhine Graben System, using more than 1800 hydrographs from a period of 30 years (1986-2016). The results show that our approach is adaptively capable of identifying homogeneous groups of hydrograph dynamics. The resulting clusters show both spatially known and unknown patterns, some of which correspond clearly to external controlling factors, such as intensive groundwater management in the northern part of the test area. This framework is easily transferable to other regions and, by adapting the describing features, also to other time series-clustering applications.
引用
收藏
页码:39 / 54
页数:16
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