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Forecasting renewable energy for environmental resilience through computational intelligence

Author

Listed:
  • Mansoor Khan
  • Essam A Al-Ammar
  • Muhammad Rashid Naeem
  • Wonsuk Ko
  • Hyeong-Jin Choi
  • Hyun-Koo Kang

Abstract

Wind power forecasting plays a key role in the design and maintenance of wind power generation which can directly help to enhance environment resilience. Offshore wind power forecasting has become more challenging due to their operation in a harsh and multi-faceted environment. In this paper, the data generated from offshore wind turbines are used for power forecasting purposes. First, fragmented data is filtered and Deep Auto-Encoding is used to select high dimensional features. Second, a mixture of the CNN and LSTM models is used to train prominent wind features and further improve forecasting accuracy. Finally, the CNN-LSTM deep learning hybrid model is fine-tuned with various parameters for reliable forecasting of wind energy on three different offshore Windfarms. A state-of-the-art comparison against existing models is presented based on root mean square error (RMSE) and mean absolute error (MAE) respectively. The forecasting analyses indicate that the proposed CNN-LSTM strategy is quite successful for offshore wind turbines by retaining the lowest RMSE and MAE along with high forecasting accuracy. The experimental findings will be helpful to design environment resilient energy transition pathways.

Suggested Citation

  • Mansoor Khan & Essam A Al-Ammar & Muhammad Rashid Naeem & Wonsuk Ko & Hyeong-Jin Choi & Hyun-Koo Kang, 2021. "Forecasting renewable energy for environmental resilience through computational intelligence," PLOS ONE, Public Library of Science, vol. 16(8), pages 1-23, August.
  • Handle: RePEc:plo:pone00:0256381
    DOI: 10.1371/journal.pone.0256381
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    References listed on IDEAS

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    1. Jiang, Yu & Song, Zhe & Kusiak, Andrew, 2013. "Very short-term wind speed forecasting with Bayesian structural break model," Renewable Energy, Elsevier, vol. 50(C), pages 637-647.
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    Cited by:

    1. Cheng Yang & Jun Jia & Ke He & Liang Xue & Chao Jiang & Shuangyu Liu & Bochao Zhao & Ming Wu & Haoyang Cui, 2023. "Comprehensive Analysis and Evaluation of the Operation and Maintenance of Offshore Wind Power Systems: A Survey," Energies, MDPI, vol. 16(14), pages 1-39, July.
    2. Wang, Jianing & Zhu, Hongqiu & Zhang, Yingjie & Cheng, Fei & Zhou, Can, 2023. "A novel prediction model for wind power based on improved long short-term memory neural network," Energy, Elsevier, vol. 265(C).

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