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Article Details

  • Article Code : FIRAT-AKADEMI-8882-4214
  • Article Type : Araştırma Makalesi
  • Publication Number : 2A0140
  • Page Number : 98-107
  • Doi : 10.12739/NWSA.2018.13.2.2A0140
  • Abstract Reading : 723
  • Download : 148
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Issue Details

  • Year : 2018
  • Volume : 13
  • Issue : 2
  • Number of Articles Published : 14
  • Published Date : 1.04.2018

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Technological Applied Sciences

Serial Number : 2A
ISSN No. : 1308-7223
Release Interval (in a Year) : 4 Issues

COMPARING TIME SERIES FORECASTING METHODS TO ESTIMATE WIND SPEED IN KIRIKKALE REGION

Hüseyin AYDİLEK1 , Mustafa Yasin ERTEN2 , Ertuğrul ÇAM3 , Nihat İNANÇ4

Due to the non-storable nature of electric energy, short-term and long-term electricity generation and consumption forecast are critical to keeping electricity market in balance. In addition, the production estimate of wind energy is parallel to the estimate of wind speed. Since wind speed forecasts includes seasonal and time-dependent trends, time series forecasting methods produce successful results in wind energy forecasting. However, choosing the most appropriate time series forecasting method for short-term and long-term production forecasts is of special importance. In this study, short-term and long-term wind speed estimations were made for the wind turbine at Kırıkkale University by using Exponential Smoothing (ES) and ARMA (Auto Regressive Moving Average) methods. The most suitable methods for forecasting short-term and long-term wind speed have been determined with the obtained results.

Keywords
Wind Energy, Time Series, Forecasting, ARMA, ES ,

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Authors

Hüseyin AYDİLEK (1)

huseyinaydilek@kku.edu.tr | 0000-0003-3051-4259

Mustafa Yasin ERTEN (2) (Corresponding Author)

Kırıkkale University
mustafaerten@kku.edu.tr | 0000-0002-5140-1213

Ertuğrul ÇAM (3)

ertugrul_cam@yahoo.com | 0000-0001-6491-9225

Nihat İNANÇ (4)

nihatinanc@kku.edu.tr | 0000-0003-2989-6632

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References
[1] Monteiro, C., Bessa, R., Miranda, V., Botterud, A., Wang, J., and Conzelmann, G., (2009). Wind Power Forecasting: State-of-the-art 2009 (No. ANL/DIS-10-1). Argonne National Laboratory (ANL).