DocumentCode
1405536
Title
Simulation embedded artificial intelligence search method for supplier trading portfolio decision
Author
Feng, D. ; Yan, Zhennan ; stergaard, J. ; Xu, Zongben ; Gan, Deqiang ; Zhong, Jin ; Zhang, Ni ; Dai, T.
Author_Institution
Dept. of Electr. Eng., Shanghai Jiao Tong Univ., Shanghai, China
Volume
4
Issue
2
fYear
2010
fDate
2/1/2010 12:00:00 AM
Firstpage
221
Lastpage
230
Abstract
An electric power supplier in the deregulated environment needs to allocate its generation capacities to participate in contract and spot markets. Different trading portfolios will provide suppliers with different future revenue streams of various distributions. The classical mean-variance (MV) method is inappropriate to deal with the trading portfolios whose return distribution is non-normal. In order to consider the non-normal characteristics in electricity trading, this study proposes a new model based on expected utility theory (EUT) and employs a hybrid genetic algorithm (GA) - Monte-Carlo simulation technique as solution approach. In the real market data-based numerical studies, the performances of the proposed method and the standard MV method are compared. It was found that the proposed method is able to obtain better portfolios than MV method when non-normal asset exists for trading. The simulation results also reveal the accumulation effect along trading period, which will improve the normality of the supplier trading portfolios. The authors believe the proposed method is a useful complement for the MV method and conditional value at risk (CVaR)-based methods in the supplier trading portfolio decision and evaluation.
Keywords
Monte Carlo methods; artificial intelligence; genetic algorithms; power engineering computing; power system simulation; Monte-Carlo simulation; classical mean-variance method; electric power supplier; hybrid genetic algorithm; search method; simulation embedded artificial intelligence; supplier trading portfolio decision; supplier trading portfolios; utility theory;
fLanguage
English
Journal_Title
Generation, Transmission & Distribution, IET
Publisher
iet
ISSN
1751-8687
Type
jour
DOI
10.1049/iet-gtd.2009.0096
Filename
5407465
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