Global Solar Radiation Prediction Methodology using Artificial Neural Networks for Photovoltaic Power Generation Systems

Jane Oktavia Kamadinata, Tan Lit Ken, Tohru Suwa

2017

Abstract

Solar radiation is an essential source of energy that has yet to be fully utilized. This energy can be converted into another form of more usable energy, electricity, by using photovoltaic power generation systems in order to fight against global warming. When the photovoltaic power generation systems are connected to an electrical grid, predicting near-future global solar radiation is important to stabilize the entire network. Two different simple methodologies utilizing artificial neural networks (ANNs) to predict the global solar radiation in 1 to 5 minutes in advance from sky images are developed and compared. In the first methodology, two ANNs are combined. The first ANN predicts cloud movement direction, while the second ANN predicts global solar radiation using the first ANN’s prediction results. On the other hand, a single ANN directly predicts global solar radiation in the second methodology. Both of the proposed methodologies are able to capture the trends of the global solar radiation well. Because the proposed methodologies only use limited number of sampling points, the computational effort is significantly reduced compared to the existing methodologies where the whole images need processing.

References

  1. Alonso-Montesinos, J., Batlles, F.J., Portillo, C., 2015. Solar irradiance forecasting at one-minute intervals for different sky conditions using sky camera images. Energy Convers. Manag. 105, 1166-1177.
  2. Chow, C.W., Urquhart, B., Lave, M., Dominguez, A., Kleissl, J., Shields, J., Washom, B., 2011. Intra-hour forecasting with a total sky imager at the UC San Diego solar energy testbed. Sol. Energy 85, 2881- 2893.
  3. Chu, Y., Li, M., Pedro, H.T.C., Coimbra, C.F.M., 2015. Real-time prediction intervals for intra-hour DNI forecasts. Renew. Energy 83, 234-244.
  4. Davis, G.B., Griggs, D.J., Sullivan, G.D., 1991. Automatic Estimation of Cloud Amount Using Computer Vision. J. Atmos. Ocean. Technol.
  5. Hasni, A., Sehli, A., Draoui, B., Bassou, A., Amieur, B., 2012. Estimating global solar radiation using artificial neural network and climate data in the south-western region of Algeria. Energy Procedia 18, 531-537.
  6. Marquez, R., Coimbra, C.F.M., 2013. Intra-hour DNI forecasting based on cloud tracking image analysis. Sol. Energy 91, 327-336.
  7. Mellit, A., Eleuch, H., Benghanem, M., Elaoun, C., Pavan, A.M., 2010. An adaptive model for predicting of global, direct and diffuse hourly solar irradiance. Energy Convers. Manag. 51, 771-782.
  8. Pedro, H.T.C., Coimbra, C.F.M., 2015. Nearest-neighbor methodology for prediction of intra-hour global horizontal and direct normal irradiances. Renew. Energy 80, 770-782.
  9. Sabburg, J., Wong, J., 1999. Evaluation of a ground-based sky camera system for use in surface irradiance measurement. J. Atmos. Ocean. Technol. 16, 752-759.
  10. Senkal, O., 2010. Modeling of solar radiation using remote sensing and artificial neural network in Turkey. Energy 35, 4795-4801.
  11. Souza-Echer, M.P., Pereira, E.B., Bins, L.S., Andrade, M.A.R., 2006. A simple method for the assessment of the cloud cover state in high-latitude regions by a ground-based digital camera. J. Atmos. Ocean. Technol. 23, 437-447.
  12. Ward System Groups, 1996. NeuroSHELL 2 User Manual [WWW Document]. URL http://www.wardsystems.com/ manuals/neuroshell2/ (accessed 11.1.16).
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Paper Citation


in Harvard Style

Kamadinata J., Lit Ken T. and Suwa T. (2017). Global Solar Radiation Prediction Methodology using Artificial Neural Networks for Photovoltaic Power Generation Systems . In Proceedings of the 6th International Conference on Smart Cities and Green ICT Systems - Volume 1: SMARTGREENS, ISBN 978-989-758-241-7, pages 15-22. DOI: 10.5220/0006248700150022


in Bibtex Style

@conference{smartgreens17,
author={Jane Oktavia Kamadinata and Tan Lit Ken and Tohru Suwa},
title={Global Solar Radiation Prediction Methodology using Artificial Neural Networks for Photovoltaic Power Generation Systems},
booktitle={Proceedings of the 6th International Conference on Smart Cities and Green ICT Systems - Volume 1: SMARTGREENS,},
year={2017},
pages={15-22},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0006248700150022},
isbn={978-989-758-241-7},
}


in EndNote Style

TY - CONF
JO - Proceedings of the 6th International Conference on Smart Cities and Green ICT Systems - Volume 1: SMARTGREENS,
TI - Global Solar Radiation Prediction Methodology using Artificial Neural Networks for Photovoltaic Power Generation Systems
SN - 978-989-758-241-7
AU - Kamadinata J.
AU - Lit Ken T.
AU - Suwa T.
PY - 2017
SP - 15
EP - 22
DO - 10.5220/0006248700150022