DocumentCode
1178597
Title
An Ordinal Optimization-Based Bidding Strategy for Electric Power Suppliers in the Daily Energy Market
Author
Guan, Xiangyu ; Ho, Ya-Fang ; Lai, Fang-I
Author_Institution
Harvard University, Cambridge, MA; Systems Engineering Institute
Volume
21
Issue
9
fYear
2001
Firstpage
64
Lastpage
64
Abstract
The deregulation and reconstruction of the electric power industry worldwide raises many challenging issues related to the economic and reliable operation of electric power systems. Traditional unit commitment or hydrothermal scheduling problems have been integrated with generation resource bidding, but the development of optimization-based bidding strategies is only at a very preliminary stage. This paper presents a bidding strategy based on the theory of ordinal optimization that the ordinal comparisons of performance measures are robust with respect to noise and modeling error, and the problems become much easier if the optimization goal is softened from asking for the "best" to "good enough" solution. The basic idea of our approach is to use an approximate model that describes the influence of bidding strategies on the market clearing prices (MCP). A nominal bid curve is obtained by solving optimal power generation for a given set of MCPs via Lagrangian relaxation. Then Nbids are generated by perturbing the nominal bid curve. The ordinal optimization method is applied to isolate a good enough set S that contains some good bids with high probability by performing rough evaluation. The best bid is then selected by solving full hydrothermal scheduling or unit commitment problems for each of the bids in S. Using the ordinal optimization approach we are able to obtain a good enough bidding strategy with reasonable computational effort.
Keywords
Industrial economics; Job shop scheduling; Lagrangian functions; Noise measurement; Noise robustness; Power generation; Power generation economics; Power supplies; Power system economics; Power system reliability; Electric power market deregulation; bidding strategies; electric energy bidding; hydrothermal scheduling;
fLanguage
English
Journal_Title
Power Engineering Review, IEEE
Publisher
ieee
ISSN
0272-1724
Type
jour
DOI
10.1109/MPER.2001.4311633
Filename
4311633
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