Federated learning with hyperparameter-based clustering for electrical load forecasting

被引:45
|
作者
Gholizadeh, Nastaran [1 ]
Musilek, Petr [1 ,2 ]
机构
[1] Univ Alberta, Elect & Comp Engn, Edmonton, AB T6G 2R3, Canada
[2] Univ Hradec Kralove, Appl Cybernet, Hradec Kralove, Czech Republic
基金
加拿大自然科学与工程研究理事会;
关键词
Federated learning; Electricity load forecasting; Edge computing; LSTM; Decentralized learning; CONSUMPTION; PREDICTION; REGRESSION; MODELS;
D O I
10.1016/j.iot.2021.100470
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Electrical load prediction has become an integral part of power system operation. Deep learning models have found popularity for this purpose. However, to achieve a desired prediction accuracy, they require huge amounts of data for training. Sharing electricity consumption data of individual households for load prediction may compromise user privacy and can be expensive in terms of communication resources. Therefore, edge computing methods, such as federated learning, are gaining more importance for this purpose. These methods can take advantage of the data without centrally storing it. This paper evaluates the performance of federated learning for short-term forecasting of individual house loads as well as the aggregate load. It discusses the advantages and disadvantages of this method by comparing it to centralized and local learning schemes. Moreover, a new client clustering method is proposed to reduce the convergence time of federated learning. The results show that federated learning has a good performance with a minimum root mean squared error (RMSE) of 0.117 kWh for individual load forecasting.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Communication-Efficient Federated Learning for Power Load Forecasting in Electric IoTs
    Mao, Zhengxiong
    Li, Hui
    Huang, Zuyuan
    Yang, Chuanxu
    Li, Yanan
    Zhou, Zihao
    [J]. IEEE ACCESS, 2023, 11 : 47930 - 47939
  • [42] Clustering based formulation for short term load forecasting
    Pandey, Ajay Shekhar
    Singh, D.
    Sinha, S.K.
    [J]. World Academy of Science, Engineering and Technology, 2009, 38 : 192 - 196
  • [43] Factors that Impact the Accuracy of Clustering Based Load Forecasting
    Wang, Xin
    Lee, Wei-Jen
    Huang, Heng
    Szabados, Robert Louis
    Wang, David Yanshi
    Van Olinda, Peter
    [J]. 2015 51ST IEEE INDUSTRY APPLICATIONS SOCIETY ANNUAL MEETING, 2015,
  • [44] Electrical load forecasting: A deep learning approach based on K-nearest neighbors
    Dong, Yunxuan
    Ma, Xuejiao
    Fu, Tonglin
    [J]. APPLIED SOFT COMPUTING, 2021, 99
  • [45] Federated Learning With Soft Clustering
    Li, Chengxi
    Li, Gang
    Varshney, Pramod K.
    [J]. IEEE INTERNET OF THINGS JOURNAL, 2022, 9 (10): : 7773 - 7782
  • [46] Dynamic Clustering in Federated Learning
    Kim, Yeongwoo
    Al Hakim, Ezeddin
    Haraldson, Johan
    Eriksson, Henrik
    da Silva, Jose Mairton B., Jr.
    Fischione, Carlo
    [J]. IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC 2021), 2021,
  • [47] Federated learning-based privacy-preserving electricity load forecasting scheme in edge computing scenario
    Wang, Haolin
    Zhao, Yun
    He, Shan
    Xiao, Yong
    Tang, Jianlin
    Cai, Ziwen
    [J]. INTERNATIONAL JOURNAL OF COMMUNICATION SYSTEMS, 2024, 37 (05)
  • [48] Electrical Load Forecasting Using Customers Clustering and Smart Meters in Internet of Things
    Imani, Maryam
    Ghassemian, Hassan
    [J]. 2018 9TH INTERNATIONAL SYMPOSIUM ON TELECOMMUNICATIONS (IST), 2018, : 113 - 117
  • [49] A solar forecasting framework based on federated learning and distributed computing
    Wen, Haoran
    Du, Yang
    Lim, Eng Gee
    Wen, Huiqing
    Yan, Ke
    Li, Xingshuo
    Jiang, Lin
    [J]. BUILDING AND ENVIRONMENT, 2022, 225
  • [50] FedBranched: Leveraging Federated Learning for Anomaly-Aware Load Forecasting in Energy Networks
    Manzoor, Habib Ullah
    Khan, Ahsan Raza
    Flynn, David
    Alam, Muhammad Mahtab
    Akram, Muhammad
    Imran, Muhammad Ali
    Zoha, Ahmed
    [J]. SENSORS, 2023, 23 (07)