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Combining predictive distributions of electricity prices. Does minimizing the CRPS lead to optimal decisions in day-ahead bidding?

Weronika Nitka, Rafał Weron

2023Badania Operacyjne i Decyzje/Operations Research and Decisions11 citationsDOIOpen Access PDF

Abstract

Probabilistic price forecasting has recently gained attention in power trading because decisions based on such predictions can yield significantly higher profits than those made with point forecasts alone. At the same time, methods are being developed to combine predictive distributions, since no model is perfect and averaging generally improves forecasting performance. In this article, we address the question of whether using CRPS learning, a novel weighting technique minimizing the continuous ranked probability score (CRPS), leads to optimal decisions in day-ahead bidding. To this end, we conduct an empirical study using hourly day-ahead electricity prices from the German EPEX market. We find that increasing the diversity of an ensemble can have a positive impact on accuracy. At the same time, the higher computational cost of using CRPS learning compared to an equal-weighted aggregation of distributions is not offset by higher profits, despite significantly more accurate predictions.

Topics & Concepts

BiddingWeightingOffset (computer science)Probabilistic logicEconometricsComputer scienceElectricity marketProbabilistic forecastingPredictive powerLead timeElectricityEconomicsMathematical optimizationOperations researchArtificial intelligenceMicroeconomicsMathematicsOperations managementEngineeringElectrical engineeringProgramming languagePhilosophyMedicineEpistemologyRadiologyEnergy Load and Power ForecastingEnergy Efficiency and ManagementForecasting Techniques and Applications
Combining predictive distributions of electricity prices. Does minimizing the CRPS lead to optimal decisions in day-ahead bidding? | Litcius