Assessing the Performance-Efficiency Trade-off of Foundation Models in Probabilistic Electricity Price Forecasting
Jan Niklas Lettner, Hadeer El Ashhab, Veit Hagenmeyer, Benjamin Sch\"afer

TL;DR
This study compares foundation models and task-specific models for probabilistic electricity price forecasting, highlighting their relative performance, efficiency, and scenarios where each excels.
Contribution
It provides a comprehensive comparison of TSFMs and task-specific models for probabilistic EPF, revealing conditions favoring each approach.
Findings
TSFMs outperform models trained from scratch in key metrics.
Task-specific models with feature augmentation can rival TSFMs.
Conventional models remain competitive considering computational costs.
Abstract
Large-scale renewable energy deployment introduces pronounced volatility into the electricity system, turning grid operation into a complex stochastic optimization problem. Accurate electricity price forecasting (EPF) is essential not only to support operational decisions, such as optimal bidding strategies and balancing power preparation, but also to reduce economic risk and improve market efficiency. Probabilistic forecasts are particularly valuable because they quantify uncertainty stemming from renewable intermittency, market coupling, and regulatory changes, enabling market participants to make informed decisions that minimize losses and optimize expected revenues. However, it remains an open question which models to employ to produce accurate forecasts. Should these be task-specific machine learning (ML) models or Time Series Foundation Models (TSFMs)? In this work, we compare…
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