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.

Abstract

Accurate and up-to-date forecasting of the power grid's carbon footprint is crucial for effective product carbon footprint (PCF) accounting and informed decarbonization decisions. However, the carbon intensity of the grid exhibits high non-stationarity, and existing methods often struggle to effectively leverage periodic and oscillatory patterns. Furthermore, these methods tend to perform poorly when confronted with irregular exogenous inputs, such as missing data or misalignment. To tackle these challenges, we propose FTimeXer, a frequency-aware time-series Transformer designed with a robust training scheme that accommodates exogenous factors. FTimeXer features an Fast Fourier Transform (FFT)-driven frequency branch combined with gated time-frequency fusion, allowing it to capture multi-scale periodicity effectively. It also employs stochastic exogenous masking in conjunction with consistency regularization, which helps reduce spurious correlations and enhance stability. Experiments conducted on three real-world datasets show consistent improvements over strong baselines. As a result, these enhancements lead to more reliable forecasts of grid carbon factors, which are essential for effective PCF accounting and informed decision-making regarding decarbonization.