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Probabilistic Forecasting in Day-Ahead Electricity Markets: Simulating Peak and Off-Peak Prices
In this paper we include dependency structures for electricity price
forecasting and forecasting evaluation. We work with off-peak and peak time
series from the German-Austrian day-ahead price, hence we analyze bivariate
data. We first estimate the mean of the two time series, and then in a second
step we estimate the residuals. The mean equation is estimated by OLS and
elastic net and the residuals are estimated by maximum likelihood. Our
contribution is to include a bivariate jump component on a mean reverting jump
diffusion model in the residuals. The models' forecasts are evaluated using
four different criteria, including the energy score to measure whether the
correlation structure between the time series is properly included or not. In
the results it is observed that the models with bivariate jumps provide better
results with the energy score, which means that it is important to consider
this structure in order to properly forecast correlated time series.Comment: 30 pages, 11 figures, 3 tables and Accepted in International Journal
of Forecastin
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