DocumentCode :
2373895
Title :
Dynamic vulnerability assessment due to transient instability based on data mining analysis for Smart Grid applications
Author :
Cepeda, J.C. ; Colomé, D.G. ; Castrillón, N.J.
Author_Institution :
Inst. of Electr. Energy, Nat. Univ. of San Juan, San Juan, Argentina
fYear :
2011
fDate :
19-21 Oct. 2011
Firstpage :
1
Lastpage :
7
Abstract :
In recent years, some Smart Grid applications have been designed in order to perform timely Self-Healing and adaptive reconfiguration actions based on system-wide analysis, with the objective of reducing the risk of power system blackouts. Real time dynamic vulnerability assessment (DVA) has to be done in order to decide and coordinate the appropriate corrective control actions, depending on the event evolution. This paper presents a novel approach for carrying out real time DVA, focused on Transient Stability Assessment (TSA), based on some time series data mining techniques (Multichannel Singular Spectrum Analysis MSSA, and Principal Component Analysis PCA), and a machine learning tool (Support Vector Machine Classifier SVM-C). In addition, a general overview of the state of the art of the methods to perform vulnerability assessment, with emphasis in the potential use of PMUs for post-contingency DVA, is described. The developed methodology is tested in the IEEE 39 bus New England test system, where the simulated cause of vulnerability is transient instability. The results show that time series data mining tools are useful to find hidden patterns in electric signals, and SVM-C can use those patterns for effectively classifying the system vulnerability status.
Keywords :
data mining; fault tolerance; learning (artificial intelligence); power engineering computing; power system reliability; power system transient stability; principal component analysis; risk analysis; smart power grids; spectral analysis; support vector machines; time series; IEEE 39 bus New England test system; PCA; SVM-C; TSA; adaptive reconfiguration actions; corrective control actions; hidden pattern extraction; machine learning tool; multichannel singular spectrum analysis; post-contingency DVA; power system blackout risk reduction; principal component analysis; real time DVA; real time dynamic vulnerability assessment; self-healing actions; smart grid application; support vector machine classifier; time series data mining technique; transient instability; transient stability assessment; Phasor measurement units; Power system dynamics; Principal component analysis; Real time systems; Security; Support vector machines; Time series analysis; Data Mining; MSSA; Pattern Recognition; Phasor measurement units; SVM; Security; Smart Grids; Transient Stability; Vulnerability Assessment;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Innovative Smart Grid Technologies (ISGT Latin America), 2011 IEEE PES Conference on
Conference_Location :
Medellin
Print_ISBN :
978-1-4577-1802-1
Type :
conf
DOI :
10.1109/ISGT-LA.2011.6083211
Filename :
6083211
Link To Document :
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