Data mining is a valuable tool in meteorological applications. Properly selected data mining techniques enable researchers to process and analyze massive amounts of data collected by satellites and other instruments. Large spatial-temporal datasets can be analyzed using different linear and nonlinear methods. The Self-Organizing Map (SOM) is a promising tool for clustering and visualizing high dimensional data and mapping spatial-temporal datasets describing nonlinear phenomena. We present results of the application of the SOM technique in regions of interest within the European re-analysis data set. The possibility of detecting climate change signals through the visualization capability of SOM tools is examined
The following files were used as data and analysis in the article "Connecting large-scale meteorolog...
We present an application of Self-Organizing Maps (SOM) for analyzing multi-model ensemble seasonal ...
Satellite remote sensing has revolutionized modern oceanography, providing frequent synoptic-scale i...
We use ERA-Interim reanalysis data of 2 meter temperature to perform a pattern analysis of the Arcti...
Discovering clustering changes in real-life datasets is important in many contexts, such as fraud de...
The Self-Organizing Maps (SOM) is a very popular algorithm, introduced by Teuvo Kohonen in the early...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
This research developed a practical methodological framework, which integrated most of the important...
We introduce a Self-Organizing Map (SOM)-based visualization method that compares cluster structures...
Kohonen Self Organizing Maps (SOM) has found application in practical all fields, especially those w...
International audienceThe use of artificial neural networks in problems related to water resources, ...
Abstract. Given the complexity of the data TEMP, meteorological measurements in height realized with...
The two-fold utility (data projection and cluster analysis) of a two-phase batch self-organizing map...
In the article, an additional visualization of self-organizing maps (SOM) has been investigated. The...
The following files were used as data and analysis in the article "Connecting large-scale meteorolog...
We present an application of Self-Organizing Maps (SOM) for analyzing multi-model ensemble seasonal ...
Satellite remote sensing has revolutionized modern oceanography, providing frequent synoptic-scale i...
We use ERA-Interim reanalysis data of 2 meter temperature to perform a pattern analysis of the Arcti...
Discovering clustering changes in real-life datasets is important in many contexts, such as fraud de...
The Self-Organizing Maps (SOM) is a very popular algorithm, introduced by Teuvo Kohonen in the early...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
This research developed a practical methodological framework, which integrated most of the important...
We introduce a Self-Organizing Map (SOM)-based visualization method that compares cluster structures...
Kohonen Self Organizing Maps (SOM) has found application in practical all fields, especially those w...
International audienceThe use of artificial neural networks in problems related to water resources, ...
Abstract. Given the complexity of the data TEMP, meteorological measurements in height realized with...
The two-fold utility (data projection and cluster analysis) of a two-phase batch self-organizing map...
In the article, an additional visualization of self-organizing maps (SOM) has been investigated. The...
The following files were used as data and analysis in the article "Connecting large-scale meteorolog...
We present an application of Self-Organizing Maps (SOM) for analyzing multi-model ensemble seasonal ...
Satellite remote sensing has revolutionized modern oceanography, providing frequent synoptic-scale i...