Short-Term Energy Consumption Forecasting at the Edge: A Federated Learning Approach

被引:59
|
作者
Savi, Marco [1 ]
Olivadese, Fabrizio [1 ]
机构
[1] Univ Milano Bicocca, Dept Informat Syst & Commun, I-20126 Milan, Italy
关键词
Forecasting; Computational modeling; Predictive models; Data models; Training; Energy consumption; Load modeling; Energy consumption forecasting; federated learning; edge computing; LSTM; SMART METER DATA; ELECTRICITY CONSUMPTION; NEURAL-NETWORKS; LOAD; PRIVACY; HYBRID; PREDICTION; BUILDINGS; FRAMEWORK; IMPACT;
D O I
10.1109/ACCESS.2021.3094089
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Residential short-term energy consumption forecasting plays an essential role in modern decentralized power systems. The rise of innovative prediction methods able to handle the high volatility of users' electrical load has posed the basis to accomplish this task. However these methods, which mostly rely on Artificial Neural Networks, require that a huge amount of users' fine-grained sensitive consumption data are centrally collected to train a generalized forecasting model, with implications on privacy and scalability. This paper proposes an innovative architecture specifically designed to overcome this need. By exploiting Federated Learning and Edge Computing capabilities, many Long Short-Term Memory (LSTM) models are locally trained by different users based on their own historical energy consumption samples. Such models are then aggregated by a specific-purpose node to build a generalized model that is re-distributed for improved forecasting at the edge. For better forecasting, our proposed local training procedure takes as input relevant features related to calendar (i.e., hour, weekday and average consumption of previous days) and weather conditions (i.e., clustered apparent temperature), and the architecture can group users according to consumption similarities (using K-means) or socioeconomic affinities. We thoroughly evaluate the approach through simulations, showing that it can lead to similar forecasting performance than a state-of-the-art centralized solution in terms of Root Mean Square Error (RMSE), but with up to an order of magnitude lower training time and up to 50 times less exchanged data when samples are recorded at finer granularity than one hour. Nonetheless, it keeps sensitive data local and therefore guarantees users' privacy.
引用
收藏
页码:95949 / 95969
页数:21
相关论文
共 50 条
  • [1] Learning-Based Short-Term Energy Consumption Forecasting
    Haddad, Hatem
    Jerbi, Feres
    Smaali, Issam
    ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS, PT II, AIAI 2024, 2024, 712 : 238 - 251
  • [2] Federated learning for interpretable short-term residential load forecasting in edge computing network
    Chongchong Xu
    Guo Chen
    Chaojie Li
    Neural Computing and Applications, 2023, 35 : 8561 - 8574
  • [3] Federated learning for interpretable short-term residential load forecasting in edge computing network
    Xu, Chongchong
    Chen, Guo
    Li, Chaojie
    NEURAL COMPUTING & APPLICATIONS, 2023, 35 (11): : 8561 - 8574
  • [4] Federated Learning for Short-Term Residential Load Forecasting
    Briggs, Christopher
    Fan, Zhong
    Andras, Peter
    IEEE OPEN ACCESS JOURNAL OF POWER AND ENERGY, 2022, 9 : 573 - 583
  • [5] Short-Term Forecasting of Building Energy Consumption with Deep Generative Learning
    Ma, Yichuan X.
    PROCEEDINGS OF BUILDING SIMULATION 2021: 17TH CONFERENCE OF IBPSA, 2022, 17 : 2248 - 2253
  • [6] Ensemble Learning Approach for Short-term Energy Consumption Prediction
    Reddy, Sujan A.
    Akashdeep, S.
    Harshvardhan, R.
    Kamath, Sowmya S.
    PROCEEDINGS OF THE 5TH JOINT INTERNATIONAL CONFERENCE ON DATA SCIENCE & MANAGEMENT OF DATA, CODS COMAD 2022, 2022, : 284 - 285
  • [7] An integrated federated learning algorithm for short-term load forecasting
    Yang, Yang
    Wang, Zijin
    Zhao, Shangrui
    Wuc, Jinran
    ELECTRIC POWER SYSTEMS RESEARCH, 2023, 214
  • [8] An integrated federated learning algorithm for short-term load forecasting
    Yang, Yang
    Wang, Zijin
    Zhao, Shangrui
    Wu, Jinran
    ELECTRIC POWER SYSTEMS RESEARCH, 2023, 214
  • [9] Stacking Deep learning and Machine learning models for short-term energy consumption forecasting
    Reddy, A. Sujan
    Akashdeep, S.
    Harshvardhan, R.
    Kamath, S. Sowmya
    ADVANCED ENGINEERING INFORMATICS, 2022, 52
  • [10] Deep Learning for Short-Term Instant Energy Consumption Forecasting in the Manufacturing Sector
    Oliveira, Nuno
    Sousa, Norberto
    Praca, Isabel
    19TH INTERNATIONAL SYMPOSIUM ON DISTRIBUTED COMPUTING AND ARTIFICIAL INTELLIGENCE, 2023, 583 : 165 - 175