FTimeXer: Frequency-aware Time-series Transformer with Exogenous variables for Robust Carbon Footprint Forecasting
arXiv cs.LG / 4/6/2026
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Key Points
- The paper introduces FTimeXer, a frequency-aware time-series Transformer aimed at more accurate carbon footprint forecasting for power grids under non-stationary carbon intensity patterns.
- It combines an FFT-driven frequency branch with gated time-frequency fusion to capture multi-scale periodic and oscillatory behaviors more effectively than prior approaches.
- To handle irregular exogenous inputs (e.g., missing or misaligned data), FTimeXer uses stochastic exogenous masking plus consistency regularization to improve robustness and reduce spurious correlations.
- Experiments on three real-world datasets reportedly show consistent gains over strong baselines, leading to more reliable grid carbon factor forecasts.
- More dependable carbon factor forecasting is positioned as a key enabler for accurate product carbon footprint (PCF) accounting and better decarbonization decision-making.
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