Clustering of small watersheds in hilly areas based on complex network theory and similarity analysis

Clustering analysis of small watersheds is an effective tool for identifying the similarity of runoff generation and concentration. In this paper, 545 small watersheds in the hilly areas of Shandong Province were investigated, and 12 indicators representing their climate and subsurface characteristi...

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Veröffentlicht in:Water science & technology. Water supply 2024-05, Vol.24 (5), p.1515-1528
Hauptverfasser: Li, Dongyun, Sang, Guoqing, Wang, Haijun, Liu, Yang, Wang, Weilin
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Sprache:eng
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Zusammenfassung:Clustering analysis of small watersheds is an effective tool for identifying the similarity of runoff generation and concentration. In this paper, 545 small watersheds in the hilly areas of Shandong Province were investigated, and 12 indicators representing their climate and subsurface characteristics were selected to identify communities based on hydrological similarity. We further analyzed the hydrological connections among the small watersheds within each community using three indicators (network mean, centrality, and k-core). Finally, the clustering results were evaluated on the basis of the small watershed flood peak modulus. The results of this complex network method indicate that the study area contained six large communities and nine small communities. The community-clustering results were reasonable and showed the interconnectedness of the watersheds within each community. The three network indicators adequately described the degree of similarity, the representativeness of the watersheds, and the spatial scales of similar hydrological features. This method should be helpful for addressing the issue of parameter transplantation in ungauged watersheds and implementation of a flood risk management strategy.
ISSN:1606-9749
1607-0798
DOI:10.2166/ws.2024.089