A privacy-preserving framework integrating federated learning and transfer learning for wind power forecasting

ENERGY(2024)

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摘要
Data-driven approaches show significant potential in accurately forecasting the power generation of wind tur-bines. However, it suffers from a lack of training data in various scenarios. Transfer learning has been employed as a solution to address the issue of limited data by leveraging data from other turbines. However, the con-ventional centralized training approach raises concerns about data privacy risks. In this study, we propose a privacy-preserving framework that incorporates federated learning and transfer learning for wind power fore-casting. Firstly, we design a hybrid model with a series architecture as the backbone model to improve fore-casting accuracy. Secondly, the proposed two-stage framework consists of federated learning-based pre-training and personalized fine-tuning. The federated learning stage pre-trains a knowledge-sharing model without disclosing raw data from source domains. Based on the pre-trained global model, personalized fine-tuning is applied to establish a customized model for the target turbine. Experimental results demonstrate that the pro-posed hybrid model achieves better forecasting accuracy. Additionally, the two-stage framework not only ad-dresses insufficient data while considering privacy preservation but also enhances personalized adaptation of shared knowledge for the target turbine. Compared to local training and traditional federated learning, the proposed framework demonstrates obvious accuracy improvements, reaching up to 43.32 % and 27.94 %, respectively.
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关键词
Privacy-preserving,Federated learning,Personalized transfer learning,Fine-tuning
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