ECTO: Exogenous-Conditioned Temporal Operator for Ultra-Short-Term Wind Power Forecasting
Cao Yuan, Junjun Wang

TL;DR
ECTO is a novel framework for ultra-short-term wind power forecasting that leverages physical priors and regime-specific calibration to improve accuracy across diverse sites.
Contribution
The paper introduces ECTO, a unified approach combining physically-informed variable selection and regime refinement for enhanced wind power prediction.
Findings
ECTO achieves the lowest MSE across three wind farms with 2.2% to 8.6% improvements.
Each component (PGVS and ECRR) contributes positively to forecasting accuracy.
PGVS learns physically meaningful, site-specific variable selection patterns.
Abstract
Accurate ultra-short-term wind power forecasting is critical for grid dispatch and reserve management, yet remains challenging due to the non-stationary, condition-dependent nature of wind generation. Meteorological exogenous variables carry substantial predictive information, but the most informative variable combination varies across sites, operating conditions, and prediction horizons. Existing deep learning approaches either treat exogenous inputs as generic auxiliary channels through uniform mixing or soft gating, or rely on fixed preprocessing steps such as PCA, without exploiting the physical structure of meteorological variables. We propose ECTO (Exogenous-Conditioned Temporal Operator), a unified framework that decomposes exogenous variable modeling into two complementary modules. Physically-Grounded Variable Selection (PGVS) performs hierarchical, group-aware sparse selection…
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