A Hybrid Method of Self Organizing Maps with Statistical Feature Extraction for Accurate and Efficient Partial Discharge Recognition and Clustering

Author(s):  
Z. H. Bohari ◽  
M. Isa ◽  
P. J. Soh ◽  
A. Z. Abdullah ◽  
M F Sulaima ◽  
...  
2016 ◽  
Vol 16 (3) ◽  
pp. 261
Author(s):  
Murilo Teixeira Silva ◽  
Lurimar Smera Batista ◽  
Frederico Medeiros Vasconcelos De Albuquerque

<pre><!--StartFragment-->The use of Self-Organizing Map (<span>SOM</span>) algorithm for feature extraction and dimensionality reduction applied to underwater object detection with Low Frequency Electromagnetic Waves is presented. Computer simulation is used to generate a direct model for the study region, and a Self Organizing Map Algorithm is used to fit the data and return a similar model, with smaller dimensionality and same characteristics. Results show that virtual sensors are created by the <span>SOM</span> algorithm with consistent predictions, filling the resolution gap of the input data. These results are useful for fastening decision making algorithms by reducing the number of inputs to a group of significant data.<!--EndFragment--></pre>


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