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2024 | OriginalPaper | Buchkapitel

Decomposition Aided Bidirectional Long-Short-Term Memory Optimized by Hybrid Metaheuristic Applied for Wind Power Forecasting

verfasst von : Luka Jovanovic, Katarina Kumpf, Nebojsa Bacanin, Milos Antonijevic, Joseph Mani, Hothefa Shaker, Miodrag Zivkovic

Erschienen in: Computational Sciences and Sustainable Technologies

Verlag: Springer Nature Switzerland

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Abstract

Increasing global energy demands and environmental concerns have in recent times lead to a shift in energy production towards green and renewable sources. While renewable energy has many advantages, it also highlights certain challenges in storage and reliability. Since many renewable sources heavily rely on weather forecasting the amount of produced energy with a degree of accuracy becomes crucial. Energy production reliant on wind farms requires accurate forecasts in order to make the most of the generated electricity. Artificial intelligence (AI) has previously been used to make tackle many complex tasks. By formulating wind-farm energy production as a time-series forecasting task novel AI techniques may be applied to address this challenge. This work explores the potential of bidirectional long-short-term (BiLSTM) neural networks for wind power production time-series forecasting. Due to the many complexities affecting wind power production data, a signal decomposition technique, variational mode decomposition (VMD), is applied to help BiLSTM networks accommodate data. Furthermore, to optimize the performance of the network an improved version of the reptile search algorithm, which builds on the admirable capabilities of the original, is introduced to optimize hyperparameter selection. The introduced method has been compared to several state-of-the-art technique forecasting wind energy production on real-world data and has demonstrated great potential, outperforming competing approaches.

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Metadaten
Titel
Decomposition Aided Bidirectional Long-Short-Term Memory Optimized by Hybrid Metaheuristic Applied for Wind Power Forecasting
verfasst von
Luka Jovanovic
Katarina Kumpf
Nebojsa Bacanin
Milos Antonijevic
Joseph Mani
Hothefa Shaker
Miodrag Zivkovic
Copyright-Jahr
2024
DOI
https://doi.org/10.1007/978-3-031-50993-3_3

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