Universiti Teknologi Malaysia Institutional Repository

Solar radiation forecast using cloud velocity for photovoltaic systems

Sing, C. K. L. and Ken, T. L. and Yee, L. K. and Kamadinata, J. O. and Sidik, N. A. C. and Asako, Y. and Quen, L. K. (2018) Solar radiation forecast using cloud velocity for photovoltaic systems. Journal of Engineering and Technological Sciences, 50 (4). pp. 479-492. ISSN 2337-5779

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Official URL: http://dx.doi.org/10.5614/j.eng.technol.sci.2018.5...

Abstract

Today, solar energy is used in a many different ways. One of the most popular technological developments for this purpose is photovoltaic conversion to electricity. However, power fluctuations due to the variability of solar energy are one of the challenges faced by the implementation of photovoltaic systems. To overcome this problem, forecasting solar radiation data several minutes in advance is needed. In this research, a methodology to forecast solar radiation using cloud velocity and cloud moving angle is proposed. Generally, a red-to-blue ratio (RBR) color model and correlation analysis are used for obtaining the cloud velocity and moving angle. Artificial neural network (ANN) forecast models with different input combinations are established. This methodology requires lower computational time since it only uses part of the pixels in the sky image. Based on R-squared analysis, it can be concluded that the ANN model with inputs of cloud velocity and moving angle and average solar radiation showed the highest accuracy among other combinations of inputs. The R-squared value was 0.59 with only a relatively small sample size of 42. The proposed model showed a highest improvement of 75.79% when compared to the ANN model based on historical solar radiation data only.

Item Type:Article
Uncontrolled Keywords:cloud velocity, forecasting model, photovoltaic systems, sky image, solar energy
Subjects:T Technology > T Technology (General)
Divisions:Malaysia-Japan International Institute of Technology
ID Code:79855
Deposited By: Narimah Nawil
Deposited On:28 Jan 2019 06:56
Last Modified:04 Jun 2020 00:27

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