Abstract
Photovoltaic solar energy is booming due to the continuous improvement in photovoltaic panel efficiency along with a downward trend in production costs. In addition, the European Union is committed to easing the implementation of renewable energy in many companies in order to obtain funding to install their own panels. Nonetheless, the nature of solar energy is intermittent and uncontrollable. This leads us to an uncertain scenario which may cause instability in photovoltaic systems. This research addresses this problem by implementing intelligent models to predict the production of solar energy. Real data from a solar farm in Scotland was utilized in this study. Finally, the models were able to accurately predict the energy to be produced in the next hour using historical information as predictor variables.
Funder
Ministerio de Ciencia e Innovación
I + D + i FEDER 2020
Subject
Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction
Reference33 articles.
1. Dhabi, A. (2021, September 03). Irena. Renewable Energy Statistics. Available online: http://www.evwind.es/2020/06/05/renewable-energy-costs-plummet-according-toirena/75021.
2. Byproduct metal requirements for U.S. Wind and solar photovoltaic electricity generation up to the year 2040 under various clean power plan scenarios;Appl. Energy,2016
3. Enhanced intrinsic photovoltaic effect in tungsten disulfide nanotubes;Nature,2019
4. Buwei, W., Jianfeng, C., Bo, W., and Shuanglei, F. (2018, January 6–8). A Solar Power Prediction Using Support Vector Machines Based on Multi-Source Data Fusion. Proceedings of the 2018 International Conference on Power System Technology (POWERCON), Guangzhou, China.
5. On a new form of selenium photocell;Am. J. Sci.,1883
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