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Title: | Electricity demand uncertainty modeling using enhanced path-based scenario generation method | Authors: | Tahmasebi, M. Pasupuleti, J. |
Issue Date: | 2017 | Abstract: | One of the most important realities and uncertainties in the deregulated electricity market is electricity demand. Electricity demand scenario generation in day-ahead markets using newly proposed Enhanced path-based scenario generation method based on autoregressive moving average is developed in this paper. A new enhanced path-based scenario generation method to generate scenarios of the random variable and uncertainties modeling to achieve lower mean absolute percentage error for scenario generation compared to path-based autoregressive moving average method is proposed. Comparison of expected values obtained from the proposed method and path-based ARMA method, as well as real values, shows lower mean absolute percentage error for proposed method. It is observed that the mean absolute percentage error is decreased 5% for electricity demand using newly proposed scenario generation method. Lower mean absolute percentage error indicates higher accuracy of this method for generation of scenarios. © 2017 IEEE. | DOI: | 10.1109/IYCE.2017.8003747 |
Appears in Collections: | COE Scholarly Publication |
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