FedGrid: A Secure Framework with Federated Learning for Energy Optimization in the Smart Grid
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- Fernández, Joaquín Delgado & Menci, Sergio Potenciano & Lee, Chul Min & Rieger, Alexander & Fridgen, Gilbert, 2022. "Privacy-preserving federated learning for residential short-term load forecasting," Applied Energy, Elsevier, vol. 326(C).
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Keywords
federated learning; smart grid; renewable energy; load prediction; power generation prediction; privacy-preserving machine learning;All these keywords.
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