Bayesian Hierarchical Probabilistic Forecasting of Intraday Electricity Prices
We address the need for forecasting methodologies that handle large uncertainties in electricity prices for continuous intraday markets by incorporating parameter uncertainty and using a broad set of covariables. This study presents the first Bayesian forecasting of electricity prices traded on the...
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Zusammenfassung: | We address the need for forecasting methodologies that handle large
uncertainties in electricity prices for continuous intraday markets by
incorporating parameter uncertainty and using a broad set of covariables. This
study presents the first Bayesian forecasting of electricity prices traded on
the German intraday market. Endogenous and exogenous covariables are handled
via Orthogonal Matching Pursuit (OMP) and regularising priors. The target
variable is the IDFull price index, with forecasts given as posterior
predictive distributions. Validation uses the highly volatile 2022 electricity
prices, which have seldom been studied. As a benchmark, we use all intraday
transactions at the time of forecast to compute a live IDFull value. According
to market efficiency, it should not be possible to improve on this last-price
benchmark. However, we observe significant improvements in point measures and
probability scores, including an average reduction of $5.9\,\%$ in absolute
errors and an average increase of $1.7\,\%$ in accuracy when forecasting
whether the IDFull exceeds the day-ahead price. Finally, we challenge the use
of LASSO in electricity price forecasting, showing that OMP results in superior
performance, specifically an average reduction of $22.7\,\%$ in absolute error
and $20.2\,\%$ in the continuous ranked probability score. |
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DOI: | 10.48550/arxiv.2403.05441 |