Abstract
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting the hourly market clearing prices and quantities in daily power markets is the most essential task and basis for any decision making. One approach to predict the market behaviors is to use the historical prices, quantities and other information to forecast the future prices and quantities. The basic idea is to use history and other estimated factors in the future to "fit" and "extrapolate" the prices and quantities. Aiming at this challenging task, we developed a neural network method to forecast the MCPs and MCQs for the California day-ahead energy markets. The structure of the neural network is a three-layer back propagation (BP) network. The historical MCPs and MCQs of California day-ahead energy market, the ISO load forecasts and other public information that may influence the markets are used for training, validating and forecasting test. Preliminary results show that our method is promising.
| Original language | English |
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| Pages | 2183-2188 |
| Number of pages | 6 |
| State | Published - 2000 |
| Event | Proceedings of the 2000 Power Engineering Society Summer Meeting - Seattle, WA, United States Duration: 16 Jul 2000 → 20 Jul 2000 |
Conference
| Conference | Proceedings of the 2000 Power Engineering Society Summer Meeting |
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| Country/Territory | United States |
| City | Seattle, WA |
| Period | 16/07/00 → 20/07/00 |
Keywords
- Artificial neural networks
- Deregulated electric power markets
- Price forecasting