Optimized Random Forest for Solar Radiation Prediction Using Sunshine Hours

Author:

Villegas-Mier Cesar1ORCID,Rodriguez-Resendiz Juvenal2ORCID,Álvarez-Alvarado José2ORCID,Jiménez-Hernández Hugo1ORCID,Odry Ákos3ORCID

Affiliation:

1. Facultad de Informática, Universidad Autónoma de Queretaro, Queretaroo 76230, Mexico

2. Facultad de Ingeniería, Universidad Autónoma de Queretaro, Queretaro 76010, Mexico

3. Department of Control Engineering and Information Technology, University of Dunaújváros, 2400 Dunaújváros, Hungary

Abstract

Knowing exactly how much solar radiation reaches a particular area is helpful when planning solar energy installations. In recent years the use of renewable energies, especially those related to photovoltaic systems, has had an impressive up-tendency. Therefore, mechanisms that allow us to predict solar radiation are essential. This work aims to present results for predicting solar radiation using optimization with the Random Forest (RF) algorithm. Moreover, it compares the obtained results with other machine learning models. The conducted analysis is performed in Queretaro, Mexico, which has both direct solar radiation and suitable weather conditions more than three quarters of the year. The results show an effective improvement when optimizing the hyperparameters of the RF and Adaboost models, with an improvement of 95.98% accuracy compared to conventional methods such as linear regression, with 54.19%, or recurrent networks, with 53.96%, without increasing the computational time and performance requirements to obtain the prediction. The analysis was successfully repeated in two different scenarios for periods in 2020 and 2021 in Juriquilla. The developed method provides robust performance with similar results, confirming the validity and effectiveness of our approach.

Funder

CONACYT

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Mechanical Engineering,Control and Systems Engineering

Reference53 articles.

1. Measurement of solar-energy (direct beam radiation) in Abu Dhabi, UAE;Islam;Renew. Energy,2009

2. Terrestrial Gross Carbon Dioxide Uptake: Global Distribution and Covariation with Climate;Beer;Science,2010

3. Changing El Niño–Southern Oscillation in a warming climate;Cai;Nat. Rev. Earth Environ.,2021

4. Future high-resolution El Niño/Southern Oscillation dynamics;Wengel;Inst. Basic Sci.,2021

5. The effect of climate change on solar radiation in Nigeria;Ohunakin;Sol. Energy,2015

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