Back to Search
Start Over
Cloud cover bias correction in numerical weather models for solar energy monitoring and forecasting systems with kernel ridge regression.
- Source :
-
Renewable Energy: An International Journal . Feb2023, Vol. 203, p113-130. 18p. - Publication Year :
- 2023
-
Abstract
- Prediction of Total Cloud Cover (TCDC) from numerical weather simulation models, such as Global Forecast System (GFS), can aid renewable energy engineers in monitoring and forecasting solar photovoltaic power generation. A major challenge is the systematic bias in TCDC simulations induced by the errors in the numerical model parameterization stages. Correction of GFS-derived cloud forecasts at multiple time steps can improve energy forecasts in electricity grids to bring better grid stability or certainty in the supply of solar energy. We propose a new kernel ridge regression (KRR) model to reduce bias in TCDC simulations for medium-term prediction at the inter-daily, e.g., 2–8 day-ahead predicted TCDC values. The proposed KRR model is evaluated against multivariate recursive nesting bias correction (MRNBC), a conventional approach and eight machine learning (ML) methods. In terms of the mean absolute error (MAE), the proposed KRR model outperforms MRNBC and ML models at 2–8 day ahead forecasts, with MAE ≈ 20–27%. A notable reduction in the simulated cloud cover mean bias error of 20–50% is achieved against the MRNBC and reference accuracy values generated using proxy-observed and non-corrected GFS-predicted TCDC in the model's testing phase. The study ascertains that the proposed KRR model can be explored further to operationalize its capabilities, reduce uncertainties in weather simulation models, and its possible consideration for practical use in improving solar monitoring and forecasting systems that utilize cloud cover simulations from numerical weather predictions. [Display omitted] • KRR model for bias correction of Total Cloud Cover forecasts is proposed. • KRR reduces bias in two-to-eight-day ahead forecasts at 0, 3, 6 UTC. • Cloud cover forecast error is reduced between 20-50% against conventional error reduction methods. • KRR is validated with multivariate recursive nested bias correction and other models. • KRR reduces bias in Total Cloud Cover forecasts for solar energy forecast systems. [ABSTRACT FROM AUTHOR]
Details
- Language :
- English
- ISSN :
- 09601481
- Volume :
- 203
- Database :
- Academic Search Index
- Journal :
- Renewable Energy: An International Journal
- Publication Type :
- Academic Journal
- Accession number :
- 161173774
- Full Text :
- https://doi.org/10.1016/j.renene.2022.12.048