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STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION

Year 2019, Volume: 5 Issue: 4, 277 - 292, 24.06.2019
https://doi.org/10.18186/thermal.581773

Abstract

In this study, the wind energy
potential of the Sinop region was analyzed statistically by using the Turkish
State Meteorological Station’s hourly wind speed data between the years of
2005-2014. The two- parameter Weibull and one-parameter Rayleigh probability
distribution functions were used to determine the wind energy potential of the
region. The
probability
distribution functions were derived from the cumulative function and used to
calculate the mean wind speed and the variance of the actual data. The best way
of representing the performance of the Weibull and Rayleigh distributions is to
use the statistical parameters such as the correlation coefficient (R2),
chi-square (χ2) and the root mean square error analysis (RMSE).  
The results of the study showed that Sinop has a mean wind speed of 3.36
m/s with a maximum value of 4.28 m/s in February of 2011, and a minimum value
of 2.41
m/s in March of 2013, while the corresponding mean wind power density is approximately 33.31
W/m2 for the whole year. In general, it was determined the wind speed
is higher during some winter and spring months, notably February and March, and
is lower during the autumn months. The Weibull distribution function was found
to be more appropriate than the Rayleigh distribution function.

References

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  • [2] Sohoni, V., Gupta, S., Nema, R. (2016). A comparative analysis of wind speed probability distributions for wind power assessment of four sites. Turk J Elec Eng & Comp Sci, 24, 4724-4735.
  • [3] Morgan, V.T. (1995). Statistical distributions of wind parameters at Sydney, Australia. Renew Energy, 6, 39-47.
  • [4] Seguro, J.V., Lambert, T.W. (2000). Modern estimation of the parameters of the Weibull wind speed distribution for wind energy analysis. J Wind Eng Ind Aerod, 85, 75-84.
  • [5] Costa Rocha, P.A., De Sousa, R.C., De Andrade, C.F., Da Silva, M.E.V. (2012). Comparison of seven numerical methods for determining Weibull parameters for wind energy generation in the northeast region of Brazil. Appl Energ, 89, 395-400.
  • [6] Ulgen, K., Hepbasli, A. (2002). Determination of Weibull parameters for wind energy analysis of Izmir, Turkey. Int J Energy Res, 26, 494–506.
  • [7] Celik, A.N. (2003). A statistical analysis of wind power density based on the Weibull and Rayleigh models at the southern region of Turkey. Renewable Energy, 29(4), 593–604.
  • [8] Karsli, V.M., Gecit, C. (2003). An investigation on wind power potential of Nurdagı- Gaziantep, Turkey. Renew Energy, 28, 823–830.
  • [9] Kose, R., Ozgur, M. A., Erbas, O., Tugcu, A. (2004). The analysis of wind data and energy potential in Kutahya, Turkey. Renew Sustain Energy Rev, 8, 277–288.
  • [10] Akpinar, E.K., Akpinar, S. (2004). Determination of the wind energy potential for Maden-Elazığ, Turkey. Energy Conversion and Management, 45, 2901-2914.
  • [11] Akpinar, E.K., Akpinar, S. (2004). Statistical Analysis of wind energy potential on the basis of the Weibull and Rayleigh distribution for Ağın-Elazığ, Turkey. J.Power Energy, 218, 557-565.
  • [12] Genc, A., Erisoglu, M., Pekgor, A., Oturanc, G., Hepbasli, A., Ulgen, K. (2005). Estimation of wind power potential using Weibull distribution. Energ Source, 27, 809-822.
  • [13] Akpinar, E.K. (2006). A statistical investigation of wind energy potential. Energy Sources, Part A, 28, 807–820.
  • [14] Gökcek, M., Bayülken, A., Bekdemir, Ş. (2007). Investigation of wind characteristics and wind energy potential in Kirklareli, Turkey. Renewable Energy, 32, 1739-1752.
  • [15] Yilmaz, V., Çelik, H.E. (2008). A statistical approach to estimate the wind speed distribution: the case of Gelibolu region. Doğuş Üniversitesi Dergisi, 9 (1), 122-132.
  • [16] Akdag, S.A., Güler, Ö. (2009). Calculation of wind energy potential and economic analysis by using Weibull Distribution—A case study from Turkey. Part 1: Determination of Weibull parameters. Energy Sources, Part B, 4, 1–8.
  • [17] Bilgili, M. and Şahin, B. (2009). Investigation of wind energy density in the Southern and Southwestern region of Turkey. Journal of Energy Engineering, 135, 1(12), 12-20.
  • [18] Mert, I., Karakus, C. (2015). A statistical analysis of wind speed data using Burr, generalized gamma, and Weibull distributions in Antakya, Turkey. Turk J Elec Eng & Comp Sci, 23, 1571 -1586.
  • [19] Dokur, E., Kurban, M. (2015). Wind speed potential analysis based on Weibull distribution. Balkan Journal of Electrical & Computer Engineering, 3(4), 231-235.
  • [20] Kaplan, Y.A., Aladağ, C. (2016). Comparison of different methods in estimating Weibull distribution parameters for wind power application. International Journal of Innovative Research in Science, Engineering and Technology. 5(12), 232-242.
  • [21] Yanıktepe, B., Özalp, C., Kaşka, Ö., Köroğlu T. (2011). An assessment of wind power potential in Osmaniye, Turkey. 6th International Advanced Technologies Symposium (IATS’11), 16-18 May 2011, Elazığ, Turkey, 82-88.
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Year 2019, Volume: 5 Issue: 4, 277 - 292, 24.06.2019
https://doi.org/10.18186/thermal.581773

Abstract

References

  • [1] Pishgar-Komleh, S.H., Keyhani, A., Sefeedpari, P. (2015). Wind speed and power density analysis based on Weibull and Rayleigh distributions (a case study: Firouzkooh county of Iran). Renewable and Sustainable Energy Reviews, 42, 313–322.
  • [2] Sohoni, V., Gupta, S., Nema, R. (2016). A comparative analysis of wind speed probability distributions for wind power assessment of four sites. Turk J Elec Eng & Comp Sci, 24, 4724-4735.
  • [3] Morgan, V.T. (1995). Statistical distributions of wind parameters at Sydney, Australia. Renew Energy, 6, 39-47.
  • [4] Seguro, J.V., Lambert, T.W. (2000). Modern estimation of the parameters of the Weibull wind speed distribution for wind energy analysis. J Wind Eng Ind Aerod, 85, 75-84.
  • [5] Costa Rocha, P.A., De Sousa, R.C., De Andrade, C.F., Da Silva, M.E.V. (2012). Comparison of seven numerical methods for determining Weibull parameters for wind energy generation in the northeast region of Brazil. Appl Energ, 89, 395-400.
  • [6] Ulgen, K., Hepbasli, A. (2002). Determination of Weibull parameters for wind energy analysis of Izmir, Turkey. Int J Energy Res, 26, 494–506.
  • [7] Celik, A.N. (2003). A statistical analysis of wind power density based on the Weibull and Rayleigh models at the southern region of Turkey. Renewable Energy, 29(4), 593–604.
  • [8] Karsli, V.M., Gecit, C. (2003). An investigation on wind power potential of Nurdagı- Gaziantep, Turkey. Renew Energy, 28, 823–830.
  • [9] Kose, R., Ozgur, M. A., Erbas, O., Tugcu, A. (2004). The analysis of wind data and energy potential in Kutahya, Turkey. Renew Sustain Energy Rev, 8, 277–288.
  • [10] Akpinar, E.K., Akpinar, S. (2004). Determination of the wind energy potential for Maden-Elazığ, Turkey. Energy Conversion and Management, 45, 2901-2914.
  • [11] Akpinar, E.K., Akpinar, S. (2004). Statistical Analysis of wind energy potential on the basis of the Weibull and Rayleigh distribution for Ağın-Elazığ, Turkey. J.Power Energy, 218, 557-565.
  • [12] Genc, A., Erisoglu, M., Pekgor, A., Oturanc, G., Hepbasli, A., Ulgen, K. (2005). Estimation of wind power potential using Weibull distribution. Energ Source, 27, 809-822.
  • [13] Akpinar, E.K. (2006). A statistical investigation of wind energy potential. Energy Sources, Part A, 28, 807–820.
  • [14] Gökcek, M., Bayülken, A., Bekdemir, Ş. (2007). Investigation of wind characteristics and wind energy potential in Kirklareli, Turkey. Renewable Energy, 32, 1739-1752.
  • [15] Yilmaz, V., Çelik, H.E. (2008). A statistical approach to estimate the wind speed distribution: the case of Gelibolu region. Doğuş Üniversitesi Dergisi, 9 (1), 122-132.
  • [16] Akdag, S.A., Güler, Ö. (2009). Calculation of wind energy potential and economic analysis by using Weibull Distribution—A case study from Turkey. Part 1: Determination of Weibull parameters. Energy Sources, Part B, 4, 1–8.
  • [17] Bilgili, M. and Şahin, B. (2009). Investigation of wind energy density in the Southern and Southwestern region of Turkey. Journal of Energy Engineering, 135, 1(12), 12-20.
  • [18] Mert, I., Karakus, C. (2015). A statistical analysis of wind speed data using Burr, generalized gamma, and Weibull distributions in Antakya, Turkey. Turk J Elec Eng & Comp Sci, 23, 1571 -1586.
  • [19] Dokur, E., Kurban, M. (2015). Wind speed potential analysis based on Weibull distribution. Balkan Journal of Electrical & Computer Engineering, 3(4), 231-235.
  • [20] Kaplan, Y.A., Aladağ, C. (2016). Comparison of different methods in estimating Weibull distribution parameters for wind power application. International Journal of Innovative Research in Science, Engineering and Technology. 5(12), 232-242.
  • [21] Yanıktepe, B., Özalp, C., Kaşka, Ö., Köroğlu T. (2011). An assessment of wind power potential in Osmaniye, Turkey. 6th International Advanced Technologies Symposium (IATS’11), 16-18 May 2011, Elazığ, Turkey, 82-88.
  • [22] https://tr.depositphotos.com/vector-images/marmara.html?qview=53816051.
There are 22 citations in total.

Details

Primary Language English
Journal Section Articles
Authors

Ebru Kavak Akpınar

Publication Date June 24, 2019
Submission Date December 6, 2017
Published in Issue Year 2019 Volume: 5 Issue: 4

Cite

APA Kavak Akpınar, E. (2019). STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION. Journal of Thermal Engineering, 5(4), 277-292. https://doi.org/10.18186/thermal.581773
AMA Kavak Akpınar E. STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION. Journal of Thermal Engineering. June 2019;5(4):277-292. doi:10.18186/thermal.581773
Chicago Kavak Akpınar, Ebru. “STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION”. Journal of Thermal Engineering 5, no. 4 (June 2019): 277-92. https://doi.org/10.18186/thermal.581773.
EndNote Kavak Akpınar E (June 1, 2019) STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION. Journal of Thermal Engineering 5 4 277–292.
IEEE E. Kavak Akpınar, “STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION”, Journal of Thermal Engineering, vol. 5, no. 4, pp. 277–292, 2019, doi: 10.18186/thermal.581773.
ISNAD Kavak Akpınar, Ebru. “STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION”. Journal of Thermal Engineering 5/4 (June 2019), 277-292. https://doi.org/10.18186/thermal.581773.
JAMA Kavak Akpınar E. STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION. Journal of Thermal Engineering. 2019;5:277–292.
MLA Kavak Akpınar, Ebru. “STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION”. Journal of Thermal Engineering, vol. 5, no. 4, 2019, pp. 277-92, doi:10.18186/thermal.581773.
Vancouver Kavak Akpınar E. STATISTICAL ANALYSIS OF WIND SPEED DISTRIBUTION WITH SINOP-TURKEY APPLICATION. Journal of Thermal Engineering. 2019;5(4):277-92.

IMPORTANT NOTE: JOURNAL SUBMISSION LINK http://eds.yildiz.edu.tr/journal-of-thermal-engineering