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Intelligent infrastructures using deep learning-based applications for energy optimisation

Author

Listed:
  • P. Monica
  • Kriti Srivastava
  • A. Chitra
  • S. Malathi
  • D. Kerana Hanirex
  • S. Silvia Priscila

Abstract

Renewable energy could boost electricity and wave power. Increased electricity consumption necessitates hydropower integration. Wind energy is cost-effective and promising. This study examines wind farm viability in windy areas. This study summarises deep learning models, methods, and wind and wave energy conditions. Comparing approaches for similar applications. A computation technique can substitute a comprehensive computer model, with a 94% accuracy rate compared to model simulations and 84% compared to other data. The study found great promise in deep learning-based energy optimisation, storage, monitoring, forecasting, and behaviour inquiry and detection. Energy regulators and utility management could evaluate sustainable electricity diversification using the study's findings. This study summarises deep learning models, methods, and wind and wave energy conditions. Comparing equivalent application approaches. A computing technique can replace a complex computer model with 94% accuracy compared to model simulations and 84% to other data. Deep learning applications for energy optimisation, storage, monitoring, forecasting, and behaviour identification and investigation were promising. The project would give energy regulators and utility management impartial advice on sustainable electricity diversification.

Suggested Citation

  • P. Monica & Kriti Srivastava & A. Chitra & S. Malathi & D. Kerana Hanirex & S. Silvia Priscila, 2024. "Intelligent infrastructures using deep learning-based applications for energy optimisation," International Journal of Critical Infrastructures, Inderscience Enterprises Ltd, vol. 20(5), pages 391-415.
  • Handle: RePEc:ids:ijcist:v:20:y:2024:i:5:p:391-415
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