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Short- and Mid-Term Forecasting of Baseload Electricity Prices in the U.K. : The Impact of Intra-Day Price Relationships and Market Fundamentals (CROSBI ID 218850)

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Maciejowska, Katarzyna ; Rafal, Weron Short- and Mid-Term Forecasting of Baseload Electricity Prices in the U.K. : The Impact of Intra-Day Price Relationships and Market Fundamentals // IEEE transactions on power systems, 31 (2015), 2; 994-1005. doi: 10.1109/TPWRS.2015.2416433

Podaci o odgovornosti

Maciejowska, Katarzyna ; Rafal, Weron

engleski

Short- and Mid-Term Forecasting of Baseload Electricity Prices in the U.K. : The Impact of Intra-Day Price Relationships and Market Fundamentals

In this paper we investigate whether considering the fine structure of half-hourly electricity prices, the market closing prices of fundamentals (natural gas, coal and CO2) and the system-wide demand can lead to significantly more accurate short- and mid-term forecasts of APX U.K. baseload prices. We evaluate the predictive accuracy of a number of univariate and multivariate time series models over a three-year out-of-sample forecasting period and compare it against that of a benchmark autoregressive model. We find that in the short-term, up to a few business days ahead, a disaggregated model which independently predicts the intra-day prices and then takes their average to yield baseload price forecasts is the best performer. However, in the mid-term, factor models which explore the correlation structure of intra-day prices lead to significantly (as measured by the Diebold-Mariano test) better baseload price forecasts. At the same time, we observe that the inclusion of fundamental variables— especially natural gas prices (in the short- term) and coal prices (in the mid-term)— provides significant gains. The CO2 prices, on the other hand, generally do not improve the price forecasts at all, at least in the time period considered in this study (April 2009– December 2013).

Electricity price; Forecasting; Vector autoregression; Factor model; Principal components

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Podaci o izdanju

31 (2)

2015.

994-1005

objavljeno

0885-8950

10.1109/TPWRS.2015.2416433

Povezanost rada

nije evidentirano

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