FTLNet: federated deep learning model for multi-horizon wind power forecasting

被引:0
|
作者
Majad Mansoor [1 ]
Gong Tao [1 ]
Adeel Feroz Mirza [2 ]
Balal Yousaf [3 ]
Muhammad Irfan [4 ]
Wei Chen [1 ]
机构
[1] Shenzhen Polytechnic University,Institute of Intelligent Manufacturing Technology
[2] Southern University of Science and Technology,Dept. of Mechanical and Energy Engineering
[3] Silesian University of Technology,Department of Technologies and Installations for Waste Management, Faculty of Energy and Environmental Engineering
[4] The City College of New York,Electrical Engineering Department
来源
关键词
Federated learning; Attention temporal network; Renewable energy; Wind power forecasting;
D O I
10.1007/s43926-025-00112-w
中图分类号
学科分类号
摘要
In the competitive market of wind power forecasting, ensuring data security while enhancing forecasting accuracy is crucial. Federated learning emerges as a key solution to these challenges, offering a way to preserve data privacy and security across multiple entities. This paper presents a groundbreaking approach that leverages Federated Transfer Learning (FTL) in conjunction with Additive Attention Temporal Neural Network architectures, focusing on the competitive wind power forecasting. Our method integrates the sophisticated capabilities of Gated Residual Networks with a strategic process of feature selection, tailored for the unique demands of secure and efficient power forecasting. Through experiments involving data from various geographical regions, this research uncovers the specific challenges of applying federated learning in a competitive landscape. The resulting FTL-Net model demonstrates exceptional performance, surpassing existing benchmarks with metrics such as a Mean Absolute Error (MAE) of 6.011, Mean Squared Error (MSE) of 13,855.45, Root Mean Squared Error (RMSE) of 11.7, a coefficient of determination (R2\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$${R}^{2}$$\end{document}) of 0.9899, and a correlation coefficient of 0.998. These results not only confirm the FTL-Net model's efficacy but also emphasize the significance of meticulous feature selection in federated learning contexts. Compared to other models, FTL-Net's superior performance, bolstered by feature selection, establishes it as a leading approach in the secure and competitive realm of wind power forecasting. This research underscores the potential of combining advanced neural network architectures with federated learning for future advancements in the field, highlighting the importance of data security and collaborative learning in achieving high accuracy in power forecasting.
引用
收藏
相关论文
共 50 条
  • [1] A novel approach to multi-horizon wind power forecasting based on deep neural architecture
    Putz, Dominik
    Gumhalter, Michael
    Auer, Hans
    RENEWABLE ENERGY, 2021, 178 : 494 - 505
  • [2] Reliable multi-horizon water demand forecasting model: A temporal deep learning approach
    Wang, Ke
    Xie, Xiang
    Liu, Banteng
    Yu, Jie
    Wang, Zhangquan
    SUSTAINABLE CITIES AND SOCIETY, 2024, 112
  • [3] A study of deep learning-based multi-horizon building energy forecasting
    Ni, Zhongjun
    Zhang, Chi
    Karlsson, Magnus
    Gong, Shaofang
    ENERGY AND BUILDINGS, 2024, 303
  • [4] An efficient hybrid deep neural network model for multi-horizon forecasting of power loads in academic buildings
    Akter, Rubina
    Shirkoohi, Majid Gholami
    Wang, Jing
    Merida, Walter
    ENERGY AND BUILDINGS, 2025, 329
  • [5] Multi-horizon Scalable Wind Power Forecast System
    Valenzuela, Camilo
    Allende, Hector
    Valle, Carlos
    PROGRESS IN ARTIFICIAL INTELLIGENCE AND PATTERN RECOGNITION, IWAIPR 2018, 2018, 11047 : 317 - 325
  • [6] Multi-Horizon Air Pollution Forecasting with Deep Neural Networks
    Arsov, Mirche
    Zdravevski, Eftim
    Lameski, Petre
    Corizzo, Roberto
    Koteli, Nikola
    Gramatikov, Sasho
    Mitreski, Kosta
    Trajkovik, Vladimir
    SENSORS, 2021, 21 (04) : 1 - 18
  • [7] An attention-based deep learning model for multi-horizon time series forecasting by considering periodic characteristic
    Fang, Jin
    Guo, Xin
    Liu, Yujia
    Chang, Xiaokun
    Fujita, Hamido
    Wu, Jian
    COMPUTERS & INDUSTRIAL ENGINEERING, 2023, 185
  • [8] Multi-Horizon Time Series Forecasting with Temporal Attention Learning
    Fan, Chenyou
    Zhang, Yuze
    Pan, Yi
    Li, Xiaoyue
    Zhang, Chi
    Yuan, Rong
    Wu, Di
    Wang, Wensheng
    Pei, Jian
    Huang, Heng
    KDD'19: PROCEEDINGS OF THE 25TH ACM SIGKDD INTERNATIONAL CONFERENCCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2019, : 2527 - 2535
  • [9] Multi-Horizon Wind Power Forecasting Using Multi-Modal Spatio-Temporal Neural Networks
    Miele, Eric Stefan
    Ludwig, Nicole
    Corsini, Alessandro
    ENERGIES, 2023, 16 (08)
  • [10] Deep learning methods for multi-horizon long-term forecasting of Harmful Algal Blooms
    Martin-Suazo, Silvia
    Moron-Lopez, Jesus
    Vakaruk, Stanislav
    Karamchandani, Amit
    Aguilar, Juan Antonio Pascual
    Mozo, Alberto
    Gomez-Canaval, Sandra
    Vinyals, Meritxell
    Ortiz, Juan Manuel
    KNOWLEDGE-BASED SYSTEMS, 2024, 301