Yıl: 2018 Cilt: 6 Sayı: 4 Sayfa Aralığı: 311 - 321 Metin Dili: İngilizce İndeks Tarihi: 24-09-2019

An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms

Öz:
Wind speed is the most important parameter of the wind energy conversion system. Therefore temperature, humiditiy andpressure data, which has significant effect on the wind speed, have become extremely important. In the literature, various models havebeen used to realize the wind speed estimation. In this study; Six different data mining algorithms were used to determine the effect ofmeteorological parameters on wind speed estimation. The data were collected from the measurement station established on the campus ofGaziosmanpaşa University. We focused on the bagging algorithm to determine the appropriate combination of wind speed estimates. Thebagging algorithm was used for the first time in estimation of wind speed by taking into account meteorological parameters. To find themost efficiency method on such problem 10-fold cross validation technique was used for comparision. From results, It is concluded thatbagging algorithm and temperature-humiditiy-pressure combination showed the best performance. Additionaly, temperature and pressuredata are more effective in the wind speed estimation.
Anahtar Kelime:

Konular: Bilgisayar Bilimleri, Yapay Zeka
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA EMEKSİZ C, DEMİR G (2018). An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. , 311 - 321.
Chicago EMEKSİZ Cem,DEMİR Gülden An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. (2018): 311 - 321.
MLA EMEKSİZ Cem,DEMİR Gülden An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. , 2018, ss.311 - 321.
AMA EMEKSİZ C,DEMİR G An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. . 2018; 311 - 321.
Vancouver EMEKSİZ C,DEMİR G An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. . 2018; 311 - 321.
IEEE EMEKSİZ C,DEMİR G "An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms." , ss.311 - 321, 2018.
ISNAD EMEKSİZ, Cem - DEMİR, Gülden. "An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms". (2018), 311-321.
APA EMEKSİZ C, DEMİR G (2018). An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. International Journal of Intelligent Systems and Applications in Engineering, 6(4), 311 - 321.
Chicago EMEKSİZ Cem,DEMİR Gülden An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. International Journal of Intelligent Systems and Applications in Engineering 6, no.4 (2018): 311 - 321.
MLA EMEKSİZ Cem,DEMİR Gülden An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. International Journal of Intelligent Systems and Applications in Engineering, vol.6, no.4, 2018, ss.311 - 321.
AMA EMEKSİZ C,DEMİR G An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. International Journal of Intelligent Systems and Applications in Engineering. 2018; 6(4): 311 - 321.
Vancouver EMEKSİZ C,DEMİR G An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms. International Journal of Intelligent Systems and Applications in Engineering. 2018; 6(4): 311 - 321.
IEEE EMEKSİZ C,DEMİR G "An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms." International Journal of Intelligent Systems and Applications in Engineering, 6, ss.311 - 321, 2018.
ISNAD EMEKSİZ, Cem - DEMİR, Gülden. "An Investigation of the Effect of Meteorological Parameters on Wind Speed Estimation Using Machine Learning Algorithms". International Journal of Intelligent Systems and Applications in Engineering 6/4 (2018), 311-321.