Assessing the potential of support vector machine for estimating daily solar radiation using sunshine duration
•Support vector machine is used to estimate daily solar radiation from sunshine duration.•Seven SVM models using different input attributes are evaluated using 35years long term data.•SVM models significantly outperform the empirical models.•The optimal SVM model is proposed. Estimation of solar rad...
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Veröffentlicht in: | Energy conversion and management 2013-11, Vol.75, p.311-318 |
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Sprache: | eng |
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Zusammenfassung: | •Support vector machine is used to estimate daily solar radiation from sunshine duration.•Seven SVM models using different input attributes are evaluated using 35years long term data.•SVM models significantly outperform the empirical models.•The optimal SVM model is proposed.
Estimation of solar radiation from sunshine duration offers an important alternative in the absence of measured solar radiation. However, due to the dynamic nature of atmosphere, accurate estimation of daily solar radiation has been being a challenging task. This paper presents an application of Support vector machine (SVM) to estimation of daily solar radiation using sunshine duration. Seven SVM models using different input attributes and five empirical sunshine-based models are evaluated using meteorological data at three stations in Liaoning province in China. All the SVM models give good performances and significantly outperform the empirical models. The newly developed model, SVM1 using sunshine ratio as input attribute, is preferred due to its greater accuracy and simple input attribute. It performs better in winter, while highest root mean square error and relative root mean square error are obtained in summer. The season-dependent SVM model is superior to the fixed model in estimation of daily solar radiation for winter, while consideration of seasonal variation of the data sets cannot improve the results for spring, summer and autumn. Moreover, daily solar radiation could be well estimated by SVM1 using the data from nearby stations. The results indicate that the SVM method would be a promising alternative over the traditional approaches for estimation of daily solar radiation. |
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ISSN: | 0196-8904 1879-2227 |
DOI: | 10.1016/j.enconman.2013.06.034 |