Abstrakt
Predicting wind energy production accurately is crucial for enhancing grid management and dispatching capacity. However, the inherent unpredictability of wind speed poses significant challenges to achieving high prediction accuracy. To address this challenge, this study introduces a novel pre-processing framework that leverages thirteen nature-inspired optimization algorithms to extract and combine Intrinsic Mode Functions (IMFs) of atmospheric and wind speed variables. The objective function ensures that the selected IMF combinations exhibit high correlation, enhancing their predictive relevance. The outputs of these algorithms are further refined using the proposed Optimal Search IMF (OAIMF) algorithm, which reduces redundancy and selects a minimal yet highly relevant set of IMF combinations for wind speed prediction. The methodology was validated through a case study conducted at the Climate, Energy, and Water Research Institute (CEWRI), NARC, Islamabad, Pakistan, leveraging real-world atmospheric data. Experimental results demonstrate that the proposed framework significantly outperforms direct prediction methods and state-of-the-art pre-processing techniques. For instance, the framework achieved an RMSE of 2.73 on an LSTM network and 3.86 on a GRU network, compared to RMSE values of 19.78 and 18.89, respectively, for direct prediction. Superior performance was also observed across MAE, MAPE, and R2 metrics. This study highlights the critical role of robust pre-processing in enhancing deep learning-based wind speed prediction. By integrating nature-inspired optimization with a novel IMF selection strategy, the proposed approach advances the state-of-the-art in renewable energy forecasting.
Cytowania
-
0
CrossRef
-
0
Web of Science
-
0
Scopus
Autorzy (5)
Cytuj jako
Pełna treść
- Wersja publikacji
- Accepted albo Published Version
- DOI:
- Cyfrowy identyfikator dokumentu elektronicznego (otwiera się w nowej karcie) 10.1109/ACCESS.2024.3511113
- Licencja
- otwiera się w nowej karcie
Słowa kluczowe
Informacje szczegółowe
- Kategoria:
- Publikacja w czasopiśmie
- Typ:
- artykuły w czasopismach
- Opublikowano w:
-
IEEE Access
nr 12,
strony 184230 - 184256,
ISSN: 2169-3536 - Język:
- angielski
- Rok wydania:
- 2024
- Opis bibliograficzny:
- Dilshad Sabir M., Khan L., Hafeez K., Ullah Z., Czapp S.: Nature-Inspired Driven Deep-AI Algorithms for Wind Speed Prediction// IEEE Access -Vol. 12, (2024), s.184230-184256
- DOI:
- Cyfrowy identyfikator dokumentu elektronicznego (otwiera się w nowej karcie) 10.1109/access.2024.3511113
- Źródła finansowania:
-
- Publikacja bezkosztowa
- Weryfikacja:
- Politechnika Gdańska
wyświetlono 5 razy
Publikacje, które mogą cię zainteresować
An Intelligent Approach to Short-Term Wind Power Prediction Using Deep Neural Networks
- T. Niksa-Rynkiewicz,
- P. Stomma,
- A. Witkowska
- + 5 autorów
Power System Dynamics. Stability and Control. 3rd edition
- J. Machowski,
- Z. Lubośny,
- J. Białek
- + 1 autorów
Analyzing Wind Energy Potential Using Efficient Global Optimization: A Case Study for the City Gdańsk in Poland
- O. Aydin,
- B. Igliński,
- K. Krukowski
- + 1 autorów