DocumentCode
3559306
Title
Using Copulas for Modeling Stochastic Dependence in Power System Uncertainty Analysis
Author
Papaefthymiou, George ; Kurowicka, Dorota
Author_Institution
Electr. Power Syst. Group (EPS), Delft Univ. of Technol., Delft
Volume
24
Issue
1
fYear
2009
Firstpage
40
Lastpage
49
Abstract
The increasing penetration of renewable generation in power systems necessitates the modeling of this stochastic system infeed in operation and planning studies. The system analysis leads to multivariate uncertainty analysis problems, involving non-Normal correlated random variables. In this context, the modeling of stochastic dependence is paramount for obtaining accurate results; it corresponds to the concurrent behavior of the random variables, having a major impact to the aggregate uncertainty (in problems where the random variables correspond to spatially spread stochastic infeeds) or their evolution in time (in problems where the random variables correspond to infeeds over specific time-periods). In order to investigate, measure and model stochastic dependence, one should transform all different random variables to a common domain, the rank/uniform domain, by applying the cumulative distribution function transformation. In this domain, special functions, copulae, can be used for modeling dependence. In this contribution the basic theory concerning the use of these functions for dependence modeling is presented and focus is given on a basic function, the Normal copula. The case study shows the application of the technique for the study of the large-scale integration of wind power in the Netherlands.
Keywords
large scale integration; power generation planning; stochastic processes; wind power; wind power plants; cumulative distribution function transformation; large-scale integration; multivariate uncertainty analysis; power generation uncertainty; power system operation; power system planning; power system renewable generation; stochastic system modeling; wind power; Copula; Monte Carlo simulation; correlation; stochastic dependence; stochastic generation; uncertainty analysis; wind power;
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
Conference_Location
12/9/2008 12:00:00 AM
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2008.2004728
Filename
4703184
Link To Document