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SkyNet: A Deep Learning Architecture for Intra-hour Multimodal Solar Forecasting with Ground-based Sky Images

Author

Listed:
  • Ruan, Guoping
  • Chen, Xiaoyang
  • Li, Yiheng
  • Lim, Eng Gee
  • Fang, Lurui
  • Jiang, Lin
  • Du, Yang
  • Wang, Fei

Abstract

The increasing penetration of photovoltaic systems introduces critical challenges to grid transient stability, primarily due to rapid power fluctuations induced by localized cloud dynamics. While intra-hour solar forecasting using ground-based sky images has emerged as a pivotal approach for mitigation strategy, it remains fundamentally constrained in addressing three crucial limitations: (1) low capability of detecting cloud dynamics for time-series forecasting, (2) probabilistic uncertainty quantification essential for risk-aware grid management, and (3) spatially resolved spatial forecasting critical for distributed energy resource coordination. We propose SkyNet, a unified multimodal deep learning framework that integrates time-series, probabilistic, and spatial forecasting within a single model. To capture local details and long-range dependencies while enabling efficient multimodal feature fusion, the Dilated Attention With Neighborhood module was proposed. Meanwhile, a unified loss function was designed to jointly train all tasks. Experimental results demonstrate that SkyNet delivers competitive or superior accuracy across horizons compared with the state-of-the-art benchmark models, offering an efficient and comprehensive forecasting solution for high-renewable power systems.

Suggested Citation

  • Ruan, Guoping & Chen, Xiaoyang & Li, Yiheng & Lim, Eng Gee & Fang, Lurui & Jiang, Lin & Du, Yang & Wang, Fei, 2026. "SkyNet: A Deep Learning Architecture for Intra-hour Multimodal Solar Forecasting with Ground-based Sky Images," Renewable Energy, Elsevier, vol. 256(PF).
  • Handle: RePEc:eee:renene:v:256:y:2026:i:pf:s096014812502018x
    DOI: 10.1016/j.renene.2025.124354
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