Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2023, , 116 - 122, 31.12.2023
https://doi.org/10.36222/ejt.1382837

Öz

Kaynakça

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Multilayer LSTM Model for Wind Power Estimation in the Scada System

Yıl 2023, , 116 - 122, 31.12.2023
https://doi.org/10.36222/ejt.1382837

Öz

Wind energy is clean energy that does not pollute the environment. However, the complex and variable operating environment of a wind turbine often makes it difficult to predict the instantaneous active power generated. In this study, a wind turbine active power estimation system based on a short-term memory network (LSTM) using time series analysis is proposed. The data obtained from the wind turbine SCADA system is used as input variables. In the proposed method, a multilayer LSTM architecture is designed to train the model. The first LSTM network consists of 64 units, and the second one consists of 32 units. This is followed by a dense layer consisting of 16 neurons. In the last layer, the architecture is finalized by using a linear activation function for the prediction process. The proposed deep learning (DL)-based LSTM prediction model takes into account environmental factors such as wind speed and wind direction for active power forecasting. The results show that the LSTM-based time series analysis method is capable of effectively capturing time series features among the data. Thus, the proposed architecture can realize high-accuracy active power forecasting.

Kaynakça

  • [1] M. Saglam, C. Spataru, and O. A. Karaman, “Electricity demand forecasting with use of artificial intelligence: The case of Gokceada Island,” Energies, vol. 15, no. 16, p. 5950, 2022. https://doi.org/10.3390/en15165950
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  • [16] S. B. Çelebi and B. G. Emiroğlu, “Leveraging deep learning for enhanced detection of Alzheimer’s disease through morphometric analysis of brain images,” Trait. Du Signal, vol. 40, no. 4, pp. 1355–1365, 2023. https://doi.org/10.18280/ts.400405
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  • [24] S. Fidan, H. Oktay, S. Polat, and S. Ozturk, “An artificial neural network model to predict the thermal properties of concrete using different neurons and activation functions,” Adv. Mater. Sci. Eng., vol. 2019, pp. 1–13, 2019. https://doi.org/10.1155/2019/3831813
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  • [29] B. Zazoum, “Solar photovoltaic power prediction using different machine learning methods,” Energy Rep., vol. 8, pp. 19–25, 2022. https://doi.org/10.1016/j.egyr.2021.11.183
  • [30] W. Zou, C. Li, and P. Chen, “An inter type-2 FCR algorithm based T–S fuzzy model for short-term wind power interval prediction,” IEEE Trans. Industr. Inform., vol. 15, no. 9, pp. 4934–4943, 2019. doi: 10.1109/TII.2019.2910606.
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Toplam 61 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Bilgisayar Yazılımı, Yazılım Mühendisliği (Diğer)
Bölüm Araştırma Makalesi
Yazarlar

Selahattin Barış Çelebi 0000-0002-6235-9348

Ömer Ali Karaman 0000-0003-1640-861X

Yayımlanma Tarihi 31 Aralık 2023
Gönderilme Tarihi 29 Ekim 2023
Kabul Tarihi 25 Kasım 2023
Yayımlandığı Sayı Yıl 2023

Kaynak Göster

APA Çelebi, S. B., & Karaman, Ö. A. (2023). Multilayer LSTM Model for Wind Power Estimation in the Scada System. European Journal of Technique (EJT), 13(2), 116-122. https://doi.org/10.36222/ejt.1382837

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