4.6 Article

Evaluation and Comparison of Spatial Clustering for Solar Irradiance Time Series

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 17, Pages -

Publisher

MDPI
DOI: 10.3390/app12178529

Keywords

solar irradiation; data mining; time-series clustering; artificial intelligence; statistics methods

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This study introduces an innovative clustering method for solar radiation stations, utilizing both static and dynamic parameters for easier solar resource forecasting. The research found that only using mean and two dynamic parameters is sufficient to characterize solar irradiation behavior at each site, and recommends using k-means or hierarchical clustering for solar radiation clustering.
This work exposes an innovative clustering method of solar radiation stations, using static and dynamic parameters, based on multi-criteria analysis for future objectives to make the forecasting of the solar resource easier. The innovation relies on a characterization of solar irradiation from both a quantitative point of view and a qualitative one (variability of the intermittent sources). Each of the 76 Spanish stations studied is firstly characterized by static parameters of solar radiation distributions (mean, standard deviation, skewness, and kurtosis) and then by dynamic ones (Hurst exponent and forecastability coefficient, which is a new concept to characterize the difficulty to predict the solar radiation intermittence) that are rarely used, or even never used previously, in such a study. A redundancy analysis shows that, among all the explanatory variables used, three are essential and sufficient to characterize the solar irradiation behavior of each site; thus, in accordance with the principle of parsimony, only the mean and the two dynamic parameters are used. Four clustering methods were applied to identify geographical areas with similar solar irradiation characteristics at a half-an-hour time step: hierarchical, k-means, k-medoids, and spectral cluster. The achieved clusters are compared with each other and with an updated Koppen-Geiger climate classification. The relationship between clusters is analyzed according to the Rand and Jaccard Indexes. For both cases (five and three classes), the hierarchical clustering algorithm is the closest to the Koppen classification. An evaluation of the clustering algorithms' performance shows no interest in implementing k-means and spectral clustering simultaneously since the results are similar by more than 90% for three and five classes. The recommendations for operating a solar radiation clustering are to use k-means or hierarchical clustering based on mean, Hurst exponent, and forecastability parameters.

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