Machine learning-based Direct Normal Irradiance (DNI) forecasting using satellite data for Concentrated Solar Power (CSP) plants with Thermal Energy Storage (TES)
摘要
Efficient operation of next-generation concentrated solar power (CSP) plants with thermal energy storage (TES) requires reliable direct normal irradiance (DNI) forecasting to optimize dispatch strategies and reduce the levelized cost of energy (LCOE). While ground-based forecasting methods offer high precision, their implementation is often cost-prohibitive for many plants. In this study, we propose a cost-effective forecasting framework using Exponential Gaussian Process Regression (Exp-GPR) trained on geostationary Himawari-8 satellite data. To capture temporal dependencies, 17 meteorological and radiative variables were utilized across lead times ranging from 30 to 360 minutes. Our results demonstrate that the Exp-GPR model achieves robust accuracy, with an