计算机科学
强化学习
风电预测
数据共享
可再生能源
人工智能
稳健性(进化)
开放的体验
风力发电
机器学习
大数据
数据挖掘
电力系统
功率(物理)
工程类
生物化学
基因
电气工程
量子力学
物理
病理
社会心理学
化学
替代医学
医学
心理学
作者
Yang Li,Ruinong Wang,Yuanzheng Li,Meng Zhang,Chao Long
出处
期刊:Applied Energy
[Elsevier]
日期:2022-11-16
卷期号:329: 120291-120291
被引量:220
标识
DOI:10.1016/j.apenergy.2022.120291
摘要
In a modern power system with an increasing proportion of renewable energy, wind power prediction is crucial to the arrangement of power grid dispatching plans due to the volatility of wind power. However, traditional centralized forecasting methods raise concerns regarding data privacy-preserving and data islands problem. To handle the data privacy and openness, we propose a forecasting scheme that combines federated learning and deep reinforcement learning (DRL) for ultra-short-term wind power forecasting, called federated deep reinforcement learning (FedDRL). Firstly, this paper uses the deep deterministic policy gradient (DDPG) algorithm as the basic forecasting model to improve prediction accuracy. Secondly, we integrate the DDPG forecasting model into the framework of federated learning. The designed FedDRL can obtain an accurate prediction model in a decentralized way by sharing model parameters instead of sharing private data which can avoid sensitive privacy issues. The simulation results show that the proposed FedDRL outperforms the traditional prediction methods in terms of forecasting accuracy. More importantly, while ensuring the forecasting performance, FedDRL can effectively protect the data privacy and relieve the communication pressure compared with the traditional centralized forecasting method. In addition, a simulation with different federated learning parameters is conducted to confirm the robustness of the proposed scheme.
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