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Probabilistic Photovoltaic Power Forecasting with Reliable Uncertainty Quantification via Multi-Scale Temporal–Spatial Attention and Conformalized Quantile Regression

Author

Listed:
  • Guanghu Wang

    (School of Electronic Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

  • Yan Zhou

    (School of Electronic Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

  • Yan Yan

    (State Grid Ningxia Electric Power Research Institute, Yinchuan 750011, China)

  • Zhihan Zhou

    (Makarov College of Marine Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

  • Zikang Yang

    (School of Electronic Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

  • Litao Dai

    (School of Electronic Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

  • Junpeng Huang

    (School of Electronic Engineering, Jiangsu Ocean University, Lianyungang 222005, China)

Abstract

Accurate probabilistic forecasting of photovoltaic (PV) power generation is crucial for grid scheduling and renewable energy integration. However, existing approaches often produce prediction intervals with limited calibration accuracy, and the interdependence among meteorological variables is frequently overlooked. This study proposes a probabilistic forecasting framework based on a Multi-scale Temporal–Spatial Attention Quantile Regression Network (MTSA-QRN) and an adaptive calibration mechanism to enhance uncertainty quantification and ensure statistically reliable prediction intervals. The framework employs a dual-pathway architecture: a temporal pathway combining Temporal Convolutional Networks (TCN) and multi-head self-attention to capture hierarchical temporal dependencies, and a spatial pathway based on Graph Attention Networks (GAT) to model nonlinear meteorological correlations. A learnable gated fusion mechanism adaptively integrates temporal–spatial representations, and weather-adaptive modules enhance robustness under diverse atmospheric conditions. Multi-quantile prediction intervals are calibrated using conformalized quantile regression to ensure reliable uncertainty coverage. Experiments on a real-world PV dataset (15 min resolution) demonstrate that the proposed method offers more accurate and sharper uncertainty estimates than competitive benchmarks, supporting risk-aware operational decision-making in power systems. Quantitative evaluation on a real-world 40 MW photovoltaic plant demonstrates that the proposed MTSA-QRN achieves a CRPS of 0.0400 before calibration, representing an improvement of over 55% compared with representative deep learning baselines such as Quantile-GRU, Quantile-LSTM, and Quantile-Transformer. After adaptive calibration, the proposed method attains a reliable empirical coverage close to the nominal level (PICP 90 = 0.9053), indicating effective uncertainty calibration. Although the calibrated prediction intervals become wider, the model maintains a competitive CRPS value (0.0453), striking a favorable balance between reliability and probabilistic accuracy. These results demonstrate the effectiveness of the proposed framework for reliable probabilistic photovoltaic power forecasting.

Suggested Citation

  • Guanghu Wang & Yan Zhou & Yan Yan & Zhihan Zhou & Zikang Yang & Litao Dai & Junpeng Huang, 2026. "Probabilistic Photovoltaic Power Forecasting with Reliable Uncertainty Quantification via Multi-Scale Temporal–Spatial Attention and Conformalized Quantile Regression," Sustainability, MDPI, vol. 18(2), pages 1-21, January.
  • Handle: RePEc:gam:jsusta:v:18:y:2026:i:2:p:739-:d:1838016
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