TY - JOUR T1 - Wind speed prediction using LSTM and ARIMA time series analysis models: A case study of Gelibolu AU - Demirtop, Adem AU - Sevli, Onur PY - 2024 DA - July Y2 - 2024 DO - 10.31127/tuje.1431629 JF - Turkish Journal of Engineering JO - TUJE PB - Murat YAKAR WT - DergiPark SN - 2587-1366 SP - 524 EP - 536 VL - 8 IS - 3 LA - en AB - Wind energy stands out as a prominent renewable energy source, characterized by its high efficiency, feasibility, and wide applicability. Nonetheless, the integration of wind energy into the electrical system encounters significant obstacles due to the unpredictability and variability of wind speed. Accurate wind speed prediction is essential for estimating the short-, medium-, and long-term power output of wind turbines. Various methodologies and models exist for wind speed time series prediction. This research paper proposes a combination of two approaches to enhance forecasting accuracy: deep learning, particularly Long Short-Term Memory (LSTM), and the Autoregressive Integrated Moving Average (ARIMA) model. LSTM, by retaining patterns over longer periods, improves prediction rates. Meanwhile, the ARIMA model enhances the likelihood of staying within predefined boundaries. The study utilizes daily average wind speed data from the Gelibolu district of Çanakkale province spanning 2014 to 2021. Evaluation using the root mean square error (RMSE) shows the superior forecast accuracy of the LSTM model compared to ARIMA. The LSTM model achieved an RMSE of 6.3% and a mean absolute error of 16.67%. These results indicate the potential utility of the proposed approach in wind speed forecasting, offering performance comparable to or exceeding other studies in the literature. KW - Wind speed prediction KW - Wind energy KW - LSTM KW - ARIMA KW - Deep learning CR - Torunoğlu Gedik, Ö. 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Machine learning and deep learning: A review of methods and applications. World Information Technology and Engineering Journal, 10(07), 3897-3904. UR - https://doi.org/10.31127/tuje.1431629 L1 - https://dergipark.org.tr/en/download/article-file/3706581 ER -