Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Role of Cluster Validity Indices in Delineation of Precipitation Regions
The delineation of precipitation regions is to identify homogeneous zones in which the characteristics of the process are statistically similar. The regionalization process has three main components: (i) delineation of regions using clustering algorithms, (ii) determining the optimal number of regions using cluster validity indices (CVIs), and (iii) validation of regions for homogeneity using L-moments ratio test. The identification of the optimal number of clusters will significantly affect the homogeneity of the regions. The objective of this study is to investigate the performance of the various CVIs in identifying the optimal number of clusters, which maximizes the homogeneity of the precipitation regions. The k-means clustering algorithm is adopted to delineate the regions using location-based attributes for two large areas from Canada, namely, the Prairies and the Great Lakes-St Lawrence lowlands (GL-SL) region. The seasonal precipitation data for 55 years (1951–2005) is derived using high-resolution ANUSPLIN gridded point data for Canada. The results indicate that the optimal number of clusters and the regional homogeneity depends on the CVI adopted. Among 42 cluster indices considered, 15 of them outperform in identifying the homogeneous precipitation regions. The Dunn, and Trace( ) indices found to be the best for all seasons in both the regions.
Role of Cluster Validity Indices in Delineation of Precipitation Regions
The delineation of precipitation regions is to identify homogeneous zones in which the characteristics of the process are statistically similar. The regionalization process has three main components: (i) delineation of regions using clustering algorithms, (ii) determining the optimal number of regions using cluster validity indices (CVIs), and (iii) validation of regions for homogeneity using L-moments ratio test. The identification of the optimal number of clusters will significantly affect the homogeneity of the regions. The objective of this study is to investigate the performance of the various CVIs in identifying the optimal number of clusters, which maximizes the homogeneity of the precipitation regions. The k-means clustering algorithm is adopted to delineate the regions using location-based attributes for two large areas from Canada, namely, the Prairies and the Great Lakes-St Lawrence lowlands (GL-SL) region. The seasonal precipitation data for 55 years (1951–2005) is derived using high-resolution ANUSPLIN gridded point data for Canada. The results indicate that the optimal number of clusters and the regional homogeneity depends on the CVI adopted. Among 42 cluster indices considered, 15 of them outperform in identifying the homogeneous precipitation regions. The Dunn, and Trace( ) indices found to be the best for all seasons in both the regions.
Role of Cluster Validity Indices in Delineation of Precipitation Regions
Nikhil Bhatia (Autor:in) / Jency M. Sojan (Autor:in) / Slobodon Simonovic (Autor:in) / Roshan Srivastav (Autor:in)
2020
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
Metadata by DOAJ is licensed under CC BY-SA 1.0
Web-based delineation of imprecise regions
British Library Conference Proceedings | 2006
|Delineation of demographic regions with GIS and computational intelligence
British Library Online Contents | 2004
|Delineation of Water Resources Planning and Management Regions Using GIS
British Library Conference Proceedings | 2010
|Exploring trends in wet-season precipitation and drought indices in wet, humid and dry regions
DOAJ | 2019
|