A new hybrid support vector machine–wavelet transform approach for estimation of horizontal global solar radiation

K Mohammadi, S Shamshirband, CW Tong… - Energy Conversion and …, 2015 - Elsevier
K Mohammadi, S Shamshirband, CW Tong, M Arif, D Petković, S Ch
Energy Conversion and Management, 2015Elsevier
In this paper, a new hybrid approach by combining the Support Vector Machine (SVM) with
Wavelet Transform (WT) algorithm is developed to predict horizontal global solar radiation.
The predictions are conducted on both daily and monthly mean scales for an Iranian coastal
city. The proposed SVM–WT method is compared against other existing techniques to
demonstrate its efficiency and viability. Three different sets of parameters are served as
inputs to establish three models. The results indicate that the model using relative sunshine …
Abstract
In this paper, a new hybrid approach by combining the Support Vector Machine (SVM) with Wavelet Transform (WT) algorithm is developed to predict horizontal global solar radiation. The predictions are conducted on both daily and monthly mean scales for an Iranian coastal city. The proposed SVM–WT method is compared against other existing techniques to demonstrate its efficiency and viability. Three different sets of parameters are served as inputs to establish three models. The results indicate that the model using relative sunshine duration, difference between air temperatures, relative humidity, average temperature and extraterrestrial solar radiation as inputs shows higher performance than other models. The statistical analysis demonstrates that SVM–WT approach enjoys very good performance and outperforms other approaches. For the best SVM–WT model, the obtained statistical indicators of mean absolute percentage error, mean absolute bias error, root mean square error, relative root mean square error and coefficient of determination for daily estimation are 6.9996%, 0.8405 MJ/m2, 1.4245 MJ/m2, 7.9467% and 0.9086, respectively. Also, for monthly mean estimation the values are 3.2601%, 0.5104 MJ/m2, 0.6618 MJ/m2, 3.6935% and 0.9742, respectively. Based upon relative percentage error, for the best SVM–WT model, 88.70% of daily predictions fall within the acceptable range of −10% to +10%.
Elsevier
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