/DGA-1

Code for the 2012 IEEE Transactions on Power Delivery paper on "Statistical Machine Learning and Dissolved Gas Analysis: A Review"

Primary LanguageMATLAB

Statistical Machine Learning and Dissolved Gas Analysis


Companion code for the paper:
"Statistical Machine Learning and Dissolved Gas Analysis: A Review"
P Mirowski, Y LeCun
Power Delivery, IEEE Transactions on, 2012
http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=6301810
http://www.cs.nyu.edu/~mirowski/pub/PiotrMirowski_IEEEPowerDelivery_2012_Final.pdf

An appendix to the paper submission 
"Statistical Machine Learning and Dissolved Gas Analysis: A Review" 
that describes the machine learning algorithms with further details, 
is available at: http://cs.nyu.edu/~mirowski/pub/dga/MLreview4DGOA_Appendix.pdf


Requirements:
The following libraries need to be installed 
(and the Matlab paths configured accordingly):
LibSVM with Matlab interface, 
available at: http://www.csie.ntu.edu.tw/~cjlin/libsvm/
Low-Density Separation, available at: http://olivier.chapelle.cc/lds/
The Matlab Statistics Toolbox


Installation:
After download, unzip and configure the required paths.


Tutorial:
In directory Code_Duval, execute under Matlab the following file:
Duval.m


License:
Please refer to the GNU General Public License, 
available at: http://www.gnu.org/


References for the data:
M. Duval and A. dePablo, "Interpretation of gas-in-oil analysis using new IEC 
publication 60599 and IEC TC 10 databases", 
IEEE Electrical Insulation Magazine, vol. 17, pp. 3141, 2001.