DocumentCode :
3624899
Title :
Critical Voltage Monitoring Using Sensitivity and Optimal Information Machine Learning
Author :
Jovan Ilic;Le Xie;Marija D. Ilic
Author_Institution :
Scientific Specialist in the Department of Electrical and Computer Engineering, Carnegie Mellon University, Pittsburgh, PA 15213, e-mail: jilic@ece.cmu.edu
fYear :
2006
Firstpage :
531
Lastpage :
535
Abstract :
This paper is motivated by the basic need to develop methods for on-line detection of abnormal conditions in large electric power systems. In order to implement truly effective near-automated tools for this purpose, it is necessary to overcome several problems such as: (1) excessive computational complexity; (b) unacceptable approximations; and, (3) dependence on full state measurements. In an attempt to overcome these major roadblocks, we combine tools capable of producing accurate results over broad ranges of conditions, such as off-line data mining and machine learning, with the approximate, well-understood deterministic methods, such as sensitivity-based methods. The resulting approach indirectly overcomes the dependence on full state measurements; the actual choice of the most relevant measurements becomes a result of such a combined approach. The proposed approach is illustrated on an example of detecting a given voltage threshold violation.
Keywords :
"Condition monitoring","Machine learning","Jacobian matrices","Load flow","Power systems","Entropy","Computational complexity","Data mining","Threshold voltage","Information analysis"
Publisher :
ieee
Conference_Titel :
Power Symposium, 2006. NAPS 2006. 38th North American
Print_ISBN :
1-4244-0227-1
Type :
conf
DOI :
10.1109/NAPS.2006.359623
Filename :
4201366
Link To Document :
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