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Nonparametric catchment clustering using the data depth function
Authors:Shailesh Kumar Singh  Hilary McMillan  András Bárdossy  Chebana Fateh
Institution:1. Department of Hydrological Processes, National Institute of National Institute of Water and Atmospheric Research, Christchurch, New Zealandsk.singh@niwa.co.nz;3. Department of Geography, San Diego State University, San Diego, CA, USA;4. Department of Hydrology and Geohydrology, Institute for Modelling Hydraulic and Environmental Systems, University of Stuttgart, Stuttgart, Germany;5. Centre Eau Terre Environnement, Institut National de la Recherche Scientifique, Québec-city, Canada
Abstract:ABSTRACT

The clustering of catchments is important for prediction in ungauged basins, model parameterization and watershed development and management. The aim of this study is to explore a new measure of similarity among catchments, using a data depth function and comparing it with catchment clustering indices based on flow and physical characteristics. A cluster analysis was performed for each similarity measure using the affinity propagation clustering algorithm. We evaluated the similarity measure based on depth–depth plots (DD-plots) as a basis for transferring parameter sets of a hydrological model between catchments. A case study was developed with 21 catchments in a diverse New Zealand region. Results show that clustering based on the depth–depth measure is dissimilar to clustering on catchment characteristics, flow, or flow indices. A hydrological model was calibrated for the 21 catchments and the transferability of model parameters among similar catchments was tested within and between clusters defined by each clustering method. The mean model performance for parameters transferred within a group always outperformed those from outside the group. The DD-plot based method was found to produce the best in-group performance and second-highest difference between in-group and out-group performance.
EDITOR D. Koutsoyiannis; ASSOCIATE EDITOR A. Viglione
Keywords:DD-plot  catchment similarity  data depth  affinity propagation clustering
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