A Direct Classification Approach for Reliable Wind Ramp Event Forecasting under Severe Class Imbalance
arXiv cs.AI / 3/25/2026
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Key Points
- The paper targets reliable real-time Wind Power Ramp Event (WPRE) forecasting to support grid stability by issuing early alerts for control-room operators.
- It frames WPRE prediction as a multivariate time-series classification problem and addresses the severe class imbalance where ramp events are typically under 15% of samples.
- The proposed method combines majority-class undersampling with ensemble learning to reduce bias toward the majority (normal) class and improve performance.
- It includes a data preprocessing strategy that extracts features from recent power observations and masks unavailable ramp information, aiming to integrate with traditional ramp identification tools.
- Experiments on a real-world dataset via numerical simulations report strong results, including over 85% accuracy and an 88% weighted F1 score, beating benchmark classifiers.
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