Affiliation:
1. Digital Signal Processing Division, Institute for Technological Development and Innovation in Communications (IDeTIC), University of Las Palmas de Gran Canaria (ULPGC), 35017 Las Palmas de Gran Canaria, Spain
Abstract
The increasing penetration of solar energy into the grid has led to management difficulties that require high accuracy forecasting systems. New techniques and approaches are emerging worldwide every year to improve the accuracy of solar power forecasting models and reduce uncertainty in predictions. This article aims to evaluate and compare various solar power forecasting methods based on their characteristics and performance using imagery. To achieve this goal, this article presents an updated analysis of diverse research, which is classified in terms of the technologies and methodologies applied. This analysis distinguishes studies that use ground-based sensor measurements, satellite data processing, or all-sky camera images, as well as statistical regression approaches, artificial intelligence, numerical models, image processing, or a combination of these technologies and methods. Key findings include the superior accuracy of hybrid models that integrate multiple data sources and methodologies, and the promising potential of all-sky camera systems for very short-term forecasting due to their ability to capture rapid changes in cloud cover. Additionally, the evaluation of different error metrics highlights the importance of selecting appropriate benchmarks, such as the smart persistence model, to enhance forecast reliability. This review underscores the need for continued innovation and integration of advanced technologies to meet the challenges of solar energy forecasting.
Reference220 articles.
1. Methods and tools to evaluate the availability of renewable energy sources;Biberacher;Renew. Sustain. Energy Rev.,2011
2. Development of an irradiance-based weather derivative to hedge cloud risk for solar energy systems;Boyle;Renew. Energy,2021
3. Master optimization process based on neural networks ensemble for 24-h solar irradiance forecast;Cornaro;Sol. Energy,2015
4. Lorenz, E., Remund, J., Müller, S.C., Traunmüller, W., Steinmaurer, G., Pozo, D., Ruiz-Arias, J.A., Lara Fanego, V., Ramirez, L., and Romeo, M.G. (2009, January 21–25). Benchmarking of Different Approaches to Forecast Solar Irradiance. Proceedings of the 24th European Photovoltaic Solar Energy Conference, Hamburg, Germany.
5. Multi-site solar power forecasting using gradient boosted regression trees;Persson;Sol. Energy,2017
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献