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Clustering and mapping spatial-temporal datasets using SOM neural networks
Author(s) -
Irini Reljin,
Branimir Reljin,
Gordana Jovanović
Publication year - 2003
Publication title -
journal of automatic control
Language(s) - English
Resource type - Journals
eISSN - 2406-0984
pISSN - 1450-9903
DOI - 10.2298/jac0301055r
Subject(s) - computer science , cluster analysis , artificial neural network , principal component analysis , empirical orthogonal functions , self organizing map , data mining , nonlinear system , pattern recognition (psychology) , artificial intelligence , machine learning , physics , quantum mechanics
Large datasets can be analyzed through different linear and nonlinear methods. Most frequently used linear method Is Principal Component Analysis (PCA) known also as EOF (Empirical Orthogonal Function) analysis, permitting both clustering and visualizing high-dimensional data Items. However, many problems are nonlinear In nature, so, for analyzing such a problems some nonlinear methods will be more appropriate. The SOM (Self-Organizing Map) neural network is very promising tool for clustering and mapping spatial-temporal datasets describing nonlinear phenomena. The SOM network is applied on the precipitation and temperature data observed in the region of Serbia and Montenegro during 48 years period (1951-1998) and the zonal maps of homogeneous geographical units are derived. These maps are compared with those recently derived via EOF analysis. Significant similarity of results derived from the two methods confirms high efficiency of the SOM network in analyzing spatial-temporal fields. Moreover, the SOM neural network is more appropriate in analyzing climate data since both climate data and the SOM analyzing method are nonlinear in nature

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