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Swarm intelligence-based Multi-Layer Kernel Meta Extreme Learning Machine for tidal current to power prediction

Author

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  • Dokur, Emrah
  • Erdogan, Nuh
  • Yuzgec, Ugur

Abstract

Tidal energy, with its predictable and consistent nature, offers a scalable ocean renewable resource that can diversify the energy generation mix for countries with suitable coastal conditions. Accurate tidal current-to-power forecasting is essential to optimize power system management, improve grid stability, and inform the design of power processing and storage units. This study proposes a novel hybrid model integrating Swarm Decomposition with a Multi-Layer Kernel Meta Extreme Learning Machine to forecast non-stationary tidal currents. The Swarm Decomposition isolates key oscillatory components, reducing noise and improving feature extraction, while the kernel-based architecture enhances generalization and scalability by minimizing the need for extensive parameter tuning, resulting in higher forecasting accuracy and computational efficiency. The model is validated on two real-world tidal current datasets from distinct locations, incorporating seasonal variations, and compared against well-established extreme learning machines and deep learning models. A sensitivity analysis of signal decomposition parameters demonstrated their impact on decomposition quality and computational cost. The proposed model outperformed superior performance on both tidal datasets, achieving a 5-fold reduction in mean squared error and increased R2 from 0.9653 to 0.9933. These findings highlight the model’s robustness and adaptability to diverse tidal conditions, making it a reliable tool for tidal power forecasting.

Suggested Citation

  • Dokur, Emrah & Erdogan, Nuh & Yuzgec, Ugur, 2025. "Swarm intelligence-based Multi-Layer Kernel Meta Extreme Learning Machine for tidal current to power prediction," Renewable Energy, Elsevier, vol. 243(C).
  • Handle: RePEc:eee:renene:v:243:y:2025:i:c:s0960148125001788
    DOI: 10.1016/j.renene.2025.122516
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