2018
DOI: 10.3390/en11061376
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Hybrid Decomposition-Reconfiguration Models for Long-Term Solar Radiation Prediction Only Using Historical Radiation Records

Abstract: Solar radiation prediction is significant for solar energy utilization. This paper presents hybrid methods following the decomposition-prediction-reconfiguration paradigm using only historical radiation records with different combination of decomposition methods, Ensemble Empirical Mode Decomposition (EEMD) and Wavelet Analysis (WA), and the reconfiguration methods, regression model (RE) and Artificial Neural Network (ANN). The application in west China indicates that these hybrid decomposition-reconfiguration… Show more

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Cited by 12 publications
(7 citation statements)
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“…Univariate model-based methods can be divided into linear models, mainly including autoregressive and autoregressive moving average models [13], and nonlinear models such as artificial neural networks [14], support vector machine with kernel trick [15], decision tree [16], wavelet-based methods [17], Markov regime switching model [18], and k-nearest neighbors (kNN) [16]. Although nonlinear models (compared to linear models) seem to be more accurate in terms of capturing the nonlinear characteristic and time varying behavior of solar power generation, these methods generally take a longer time for training/tuning parameters and easily fall into local minimum.…”
Section: Literature Reviewmentioning
confidence: 99%
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“…Univariate model-based methods can be divided into linear models, mainly including autoregressive and autoregressive moving average models [13], and nonlinear models such as artificial neural networks [14], support vector machine with kernel trick [15], decision tree [16], wavelet-based methods [17], Markov regime switching model [18], and k-nearest neighbors (kNN) [16]. Although nonlinear models (compared to linear models) seem to be more accurate in terms of capturing the nonlinear characteristic and time varying behavior of solar power generation, these methods generally take a longer time for training/tuning parameters and easily fall into local minimum.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Although a limited number of publications in the literature put emphasis on the super-short-term prediction timeframe, this type of prediction is useful for real time control of renewables, regulation actions and power quality enhancement. Short-term prediction methods are suitable for economic load dispatch planning or load increment/decrement decisions, and long-term prediction is normally valuable for unit commitment decisions, reserve requirement decisions, and maintenance scheduling to obtain optimal operating cost [17]. In Ref.…”
Section: Literature Reviewmentioning
confidence: 99%
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“…Meteorological quantities are stable in a site with photovoltaic panels. Therefore, training the model from the historical effective daily surface radiation has significant importance for the forecasting of solar irradiation [9].…”
Section: Introduction 1research Backgroundmentioning
confidence: 99%
“…The multivariate and multi-step time series forecasting model's input-output mapping is quite complex and has a low prediction accuracy. To effectively carry out long sequence prediction by fully mining the dependence relationship between time series, researchers have proposed various models based on mathematical transformations [28], Temporal Convolutional Network [29], and Ensemble Empirical Mode Decomposition [30]. Informer [31], a long series forecasting model based on the attention mechanism proposed in 2021, effectively extracts the coupling relationship between the correlated time series through the complex nonlinear mapping relationship established by the encoder and decoder, reduces computational complexity by using the sparse self-attention mechanism, and predicts the correlated time series accurately and efficiently.…”
Section: Introductionmentioning
confidence: 99%