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The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network

Year 2023, Volume: 7 Issue: 2, 213 - 223, 31.12.2023
https://doi.org/10.47897/bilmes.1406384

Abstract

This study investigates the effect of data decomposition to improve the performance of artificial neural networks (ANNs), widely used in wind speed forecasting in the wind energy sector. Artificial neural networks are essential tools for planning and optimizing the daily generation of wind power plants. However, prediction errors can lead to significant problems in power generation and energy grid management. The results show that data decomposition substantially affects the wind speed forecasting performance of neural networks. These findings are essential for researchers and industry professionals interested in developing more accurate forecasting models for power generation planning and management in the wind energy sector. By integrating artificial neural networks and data disaggregation methods, the study stands out as an essential step forward to improve the accuracy of wind speed forecasts and optimize the efficiency of wind energy facilities.

References

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The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network

Year 2023, Volume: 7 Issue: 2, 213 - 223, 31.12.2023
https://doi.org/10.47897/bilmes.1406384

Abstract

This study investigates the effect of data decomposition to improve the performance of artificial neural networks (ANNs), widely used in wind speed forecasting in the wind energy sector. Artificial neural networks are essential tools for planning and optimizing the daily generation of wind power plants. However, prediction errors can lead to significant problems in power generation and energy grid management. The results show that data decomposition substantially affects the wind speed forecasting performance of neural networks. These findings are essential for researchers and industry professionals interested in developing more accurate forecasting models for power generation planning and management in the wind energy sector. By integrating artificial neural networks and data disaggregation methods, the study stands out as an essential step forward to improve the accuracy of wind speed forecasts and optimize the efficiency of wind energy facilities.

References

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  • [16] G. Parapuram. M. Mokhtari. and J. Hmida. "An artificially intelligent technique to generate synthetic geomechanical well logs for the bakken formation". Energies. vol. 11. no. 3. p. 680. 2018.
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  • [36] G. Kariniotakis., G. Stavrakakis. and E. Nogaret. "Wind power forecasting using advanced neural networks models". Ieee Transactions on Energy Conversion. vol. 11. no. 4. p. 762-767. 1996.
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There are 79 citations in total.

Details

Primary Language Turkish
Subjects Wind Energy Systems, Renewable Energy Resources
Journal Section Articles
Authors

Serkan Şenkal 0000-0002-4571-3923

Cem Emeksiz 0000-0002-4817-9607

Publication Date December 31, 2023
Submission Date December 18, 2023
Acceptance Date December 29, 2023
Published in Issue Year 2023 Volume: 7 Issue: 2

Cite

APA Şenkal, S., & Emeksiz, C. (2023). The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network. International Scientific and Vocational Studies Journal, 7(2), 213-223. https://doi.org/10.47897/bilmes.1406384
AMA Şenkal S, Emeksiz C. The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network. ISVOS. December 2023;7(2):213-223. doi:10.47897/bilmes.1406384
Chicago Şenkal, Serkan, and Cem Emeksiz. “The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction With Artificial Neural Network”. International Scientific and Vocational Studies Journal 7, no. 2 (December 2023): 213-23. https://doi.org/10.47897/bilmes.1406384.
EndNote Şenkal S, Emeksiz C (December 1, 2023) The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network. International Scientific and Vocational Studies Journal 7 2 213–223.
IEEE S. Şenkal and C. Emeksiz, “The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network”, ISVOS, vol. 7, no. 2, pp. 213–223, 2023, doi: 10.47897/bilmes.1406384.
ISNAD Şenkal, Serkan - Emeksiz, Cem. “The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction With Artificial Neural Network”. International Scientific and Vocational Studies Journal 7/2 (December 2023), 213-223. https://doi.org/10.47897/bilmes.1406384.
JAMA Şenkal S, Emeksiz C. The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network. ISVOS. 2023;7:213–223.
MLA Şenkal, Serkan and Cem Emeksiz. “The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction With Artificial Neural Network”. International Scientific and Vocational Studies Journal, vol. 7, no. 2, 2023, pp. 213-2, doi:10.47897/bilmes.1406384.
Vancouver Şenkal S, Emeksiz C. The Effect of Data Decomposition on Prediction Performance in Wind Speed Prediction with Artificial Neural Network. ISVOS. 2023;7(2):213-2.


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