Comparative Analysis of Data-Driven Algorithms for Building Energy Planning via Federated Learning
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- Fan, Cheng & Chen, Ruikun & Mo, Jinhan & Liao, Longhui, 2024. "Personalized federated learning for cross-building energy knowledge sharing: Cost-effective strategies and model architectures," Applied Energy, Elsevier, vol. 362(C).
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Keywords
federated learning; building energy management; load forecasting; data-driven algorithm;All these keywords.
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