A hybrid forecasting method for day-ahead electricity price based on GM(1,1) and ARMA

Nanjing(2009)

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Abstract
Under deregulated environment, accurate price forecasting provides crucial information for electricity market participants to make reasonable competing strategies. With comprehensive consideration of the changing rules of the day-ahead electricity price of the United States PJM electricity market, a day-ahead electricity price forecasting method based on grey system theory and time series analysis is developed, in which the equal-dimension and new-information GM(1,1) model is firstly used to the raw data of electricity price series, and then the autoregressive moving average (ARMA) model is used to the grey residual series. The numerical example based on the historical data of the PJM market from July to September in 2007 shows that the method can reflect the characteristics of electricity price better and the forecasting accuracy can be improved virtually compared with the conventional GM(1,1) model.
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Key words
gm(1,time series analysis,grey systems,forecasting theory,1),day-ahead electricity price forecasting method,autoregressive moving average processes,autoregressive moving average model,grey residual series,united states pjm electricity market,grey system theory,power markets,hybrid forecasting method,time series,pricing,predictive models,moving average,electricity market,forecasting,electricity,accuracy,arma model,data models
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