Title :
Contingency Probability Estimation Using Weather and Geographical Data for On-Line Security Assessment
Author :
Xiao, Fei ; McCalley, James D. ; Ou, Yan ; Adams, John ; Myers, Steven
Author_Institution :
Iowa State Univ., Ames, IA
Abstract :
Contingency probabilities are essential in applying probabilistic methods to operations-based security assessment and related decision-making. There are two basic issues that need particular attention. One is lack of data. The other is dependence on environmental conditions. This paper describes design and implementation of a contingency probability estimator. Statistical methods employed in the estimator include maximum likelihood and linear regression. The work makes use of a limited amount of historical data together with corresponding weather and locational data, to provide contingency probabilities that appropriately reflect conditions and location of each circuit. The approach is illustrated using four years of outage data
Keywords :
decision making; environmental factors; maximum likelihood estimation; power system security; probability; regression analysis; contingency probability estimation; decision-making; environmental conditions; geographical data; linear regression; maximum likelihood; on-line security assessment; statistical methods; weather data; Circuits; Councils; Data security; Decision making; Parameter estimation; Power engineering computing; Power system reliability; Power system security; Probability; Voltage; Contingency probability; data pooling; decision-making; failure rate; maximum likelihood; operations; regression; security;
Conference_Titel :
Probabilistic Methods Applied to Power Systems, 2006. PMAPS 2006. International Conference on
Conference_Location :
Stockholm
Print_ISBN :
978-91-7178-585-5
DOI :
10.1109/PMAPS.2006.360410