2021
DOI: 10.1007/s12667-021-00480-6
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Spatio-temporal deep learning for day-ahead wind speed forecasting relying on WRF predictions

Abstract: We focus on deep learning algorithms, improving upon the Weather Research and Forecasting (WRF) model, and we show that the combination of these methods produces day-ahead wind speed predictions of high accuracy, with no need for previous-day measurements. We also show that previous-day data, if available, offer a significant enhancement. Our main contribution is the design and testing of original neural networks that capture both spatial and temporal characteristics of the wind, by combining convolutional (CN… Show more

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Cited by 6 publications
(1 citation statement)
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“…The obtained values of MSE and RMSE errors were from 0.6 m/s to 1.5 m/s and from 1.0 m/s to 2.0 m/s, respectively. According to works on wind velocity prediction [93][94][95], the values of this order mean low differences between these two datasets.…”
Section: Energy Use For Space Heating and Coolingmentioning
confidence: 99%
“…The obtained values of MSE and RMSE errors were from 0.6 m/s to 1.5 m/s and from 1.0 m/s to 2.0 m/s, respectively. According to works on wind velocity prediction [93][94][95], the values of this order mean low differences between these two datasets.…”
Section: Energy Use For Space Heating and Coolingmentioning
confidence: 99%