2017
DOI: 10.1016/j.renene.2016.12.095
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Machine learning methods for solar radiation forecasting: A review

Abstract: Forecasting the output power of solar systems is required for the good operation of the power grid or for the optimal management of the energy fluxes occurring into the solar system. Before forecasting the solar systems output, it is essential to focus the prediction on the solar irradiance. The global solar radiation forecasting can be performed by several methods; the two big categories are the cloud imagery combined with physical models, and the machine learning models. In this context, the objective of thi… Show more

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Cited by 1,218 publications
(499 citation statements)
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References 73 publications
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“…As shown in subsection 3.3 the utilization of optical flow estimation for a short-term forecast of the effective cloud albedo and hence of the solar surface irradiance shows promising results. Validation results reported in recent review publications by Voyant et al [9], Antonanzas et al [10] or Barbieri et al [11] or rather publications by other leading experts, for example Raza et al [12], Wolff et al [1] or Cros et al [34] do not provide any hints that the Preprints (www.preprints.org) | NOT PEER-REVIEWED | Posted: 28 April 2018 doi:10.20944/preprints201804.0367.v1 application of the widely used neuronal networks lead to a significant better accuracy for cloud motion vectors. For example in Cros et al [34] the RMSE of the 30-minute forecast of the effective cloud albedo is about 30 % for a neuronal network state of the art approach and a phase correlation method.…”
Section: Discussionsupporting
confidence: 79%
See 1 more Smart Citation
“…As shown in subsection 3.3 the utilization of optical flow estimation for a short-term forecast of the effective cloud albedo and hence of the solar surface irradiance shows promising results. Validation results reported in recent review publications by Voyant et al [9], Antonanzas et al [10] or Barbieri et al [11] or rather publications by other leading experts, for example Raza et al [12], Wolff et al [1] or Cros et al [34] do not provide any hints that the Preprints (www.preprints.org) | NOT PEER-REVIEWED | Posted: 28 April 2018 doi:10.20944/preprints201804.0367.v1 application of the widely used neuronal networks lead to a significant better accuracy for cloud motion vectors. For example in Cros et al [34] the RMSE of the 30-minute forecast of the effective cloud albedo is about 30 % for a neuronal network state of the art approach and a phase correlation method.…”
Section: Discussionsupporting
confidence: 79%
“…Once a successful training has been performed, the execution of the code is very fast. Voyant et al [9] provides a review and overview of neuronal network methods applied within the forecast of solar surface radiation. A disadvantage of neuronal networks is their black box character.…”
Section: Introductionmentioning
confidence: 99%
“…The ANNs approximate the functional relationship between random input and output variables by learning from examples made up of historical data output and input variables [17]. Published applications of ANNs in the field of solar energy include time-series forecasting of solar radiation quantities [18][19][20][21] and other function approximation or regression models that map a set of input parameters like temperature into radiation quantities [22][23][24][25][26]. One major attraction of ANN methods is their ability to find relations between input and output even if the representation was intractable [19].…”
Section: Solar Radiation Under Clear-sky Conditions Provides Informatmentioning
confidence: 99%
“…Usually to predict renewable sources of energy two approaches may be used: an approach based on physical models (Badescu, 2008), using mathematical equations to describe physics and dynamics of the atmosphere that influences solar radiation, and an approach based on time series analysis by means of statistical models (Paolik (Inman et al, 2013), (Pelland, 2013), (Diagne et al, 2013), (Mohanty et al, 2017) provide good overviews on the current state of the art in solar irradiance forecasting, while (Voyant, 2017) provides a more specific review on the application of machine learning methods for solar radiation forecasting. The work proposed in (Barzin, 2016) suggests that the use of gradient boosted regression trees can be a valid solution for multi-site solar power forecasting.…”
Section: Solar Forecastmentioning
confidence: 99%