2017 IEEE Power &Amp; Energy Society General Meeting 2017
DOI: 10.1109/pesgm.2017.8273959
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Forecasting wind power generation by a new type of radial basis function-based neural network

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Cited by 7 publications
(4 citation statements)
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“…Over the years, EGF has gained importance due to the growing need for renewable energy technologies (RETs) integration into and the decentralization of conventional grid energy from distributed resources. Furthermore, EGF has become a critical aspect of energy dynamics due to its potential to improve energy efficiency and facilitate demand-side management (Chang et al, 2018, Verma et al, 2016. On the whole, it has the potential to bolster grid resilience against the twin scourges of global warming and climate change using data and technological advancements.…”
Section: Energy Grid Forecasting (Egf)mentioning
confidence: 99%
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“…Over the years, EGF has gained importance due to the growing need for renewable energy technologies (RETs) integration into and the decentralization of conventional grid energy from distributed resources. Furthermore, EGF has become a critical aspect of energy dynamics due to its potential to improve energy efficiency and facilitate demand-side management (Chang et al, 2018, Verma et al, 2016. On the whole, it has the potential to bolster grid resilience against the twin scourges of global warming and climate change using data and technological advancements.…”
Section: Energy Grid Forecasting (Egf)mentioning
confidence: 99%
“…In the study by Zhang et al (2015) similar day and Elman neural networks were utilised for short-term forecasting of power generation from wind energy installations. On the other hand, Chang et al (2018) proposed the use of a novel type of radial basis function-based neural network to forecast the power generation capacity of wind energy. Recently, Wang et al (2022) explored the nonparametric probabilistic forecasting of wind power generation using a quadratic slope quantile function and an autoregressive recurrent neural network.…”
Section: Energy Grid Forecasting (Egf)mentioning
confidence: 99%
“…NN has a strong talent to train and learn from a dataset. The applications of NN in power industry include monitoring active power filter, forecasting electrical loads in short term, analyzing and forecasting electrical energy consumption of a building, forecasting the wind power production, and forecasting electric prices [5][6][7][8].…”
Section: Introductionmentioning
confidence: 99%
“…On the other hand, the RBF has been catching the attention of researchers recently with the function approximation of its hidden neurons [17]. This research includes enhance the performance of RBF and apply RBF in various industries [7,[18][19][20][21]. RBF parks under the group of feedforward NN, which organizes its hidden neurons with function approximation theory.…”
Section: Introductionmentioning
confidence: 99%