Short-Term Solar Irradiance Forecasting Using Calibrated Probabilistic Models
This work addresses the problem of integrating solar energy into the electricity grid by improving forecasting accuracy, though it is incremental as it builds on existing methods.
The paper tackled short-term solar irradiance forecasting by developing probabilistic models with post-hoc calibration, showing that NGBoost outperforms benchmarks at intra-hourly resolution and matches numerical weather prediction models at hourly resolution.
Advancing probabilistic solar forecasting methods is essential to supporting the integration of solar energy into the electricity grid. In this work, we develop a variety of state-of-the-art probabilistic models for forecasting solar irradiance. We investigate the use of post-hoc calibration techniques for ensuring well-calibrated probabilistic predictions. We train and evaluate the models using public data from seven stations in the SURFRAD network, and demonstrate that the best model, NGBoost, achieves higher performance at an intra-hourly resolution than the best benchmark solar irradiance forecasting model across all stations. Further, we show that NGBoost with CRUDE post-hoc calibration achieves comparable performance to a numerical weather prediction model on hourly-resolution forecasting.