2020
DOI: 10.35940/ijitee.d2036.029420
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Support Vector Machine and Long Short-term Memory using Multivariate Models for Wind Power Forecasting

Eun-Ju Kang,
Nam-Rye Son*

Abstract: Renewable energy has recently gained considerable attention. In particular, interest in wind energy is rapidly increasing globally. However, the characteristics of instability and volatility in wind energy systems also have a significant on power systems. To address these issues, numerous studies have been carried out to predict wind speed and power. Methods used to forecast wind energy are divided into three categories: physical, data-driven (statistical and artificial intelligence methods), and hybrid method… Show more

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