2022
DOI: 10.1063/5.0090126
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Powernet: A novel method for wind power predictive analytics using Powernet deep learning model

Abstract: Sustainable energy is a significant power generation resource for a cleaner and CO2 free environment. Out of different renewable energies out there, wind energy is rapidly growing sector and integrated to power grid. However, uncertainty,stochastic and non stationary nature of meteorological features, on which wind power depends, makes it difficult to predict accurately. Efficiency of wind farms and the power grid is directly proportional to efficient wind power predictive analytics. This study describes a hyb… Show more

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Cited by 4 publications
(2 citation statements)
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“…CNN, known for its ability to learn from image data and make intelligent decisions, has been utilised for time series classification and hybridised with LSTM for time series forecasting. Attention-based models, such as Attention-based LSTM, GRU, and encoder-decoder, have been applied in several studies (Garg & Krishnamurthi, 2023). DBN has been used for WP forecasting and its performance has been quantified using metrics such as MAE, SDE, and RMSE.…”
Section: Survey Reviewmentioning
confidence: 99%
“…CNN, known for its ability to learn from image data and make intelligent decisions, has been utilised for time series classification and hybridised with LSTM for time series forecasting. Attention-based models, such as Attention-based LSTM, GRU, and encoder-decoder, have been applied in several studies (Garg & Krishnamurthi, 2023). DBN has been used for WP forecasting and its performance has been quantified using metrics such as MAE, SDE, and RMSE.…”
Section: Survey Reviewmentioning
confidence: 99%
“…As an improved model of recurrent neural network, long short-term memory (LSTM) network replaces ordinary neuron modules with special memory neurons to enhance the ability to remember the long-term training state and effectively solve the problem of gradient disappearance and explosion in recurrent neural networks to alleviate the problem of falling into the local optimum caused by overfitting [20][21][22][23]. Its network selectively exchanges information through the structure of information and control gates.…”
Section: Long Short-term Memory (Lstm)mentioning
confidence: 99%