TimeGPT in load forecasting: A large time series model perspective

被引:1
|
作者
Liao, Wenlong [1 ]
Wang, Shouxiang [2 ]
Yang, Dechang [3 ]
Yang, Zhe [4 ]
Fang, Jiannong [1 ]
Rehtanz, Christian [5 ]
Porte-Agel, Fernando [1 ]
机构
[1] Ecole Polytech Fed Lausanne EPFL, Wind Engn & Renewable Energy Lab, CH-1015 Lausanne, Switzerland
[2] Tianjin Univ, Key Lab Smart Grid, Minist Educ, Tianjin 300072, Peoples R China
[3] China Agr Univ, Coll Informat & Elect Engn, Beijing 100083, Peoples R China
[4] Imperial Coll London, Dept Elect & Elect Engn, London SW7 2AZ, England
[5] TU Dortmund Univ, Inst Energy Syst Energy Efficiency & Energy Econ, Dortmund, Germany
关键词
Load forecasting; Large model; Time series; Smart grid; Artificial intelligence; Foundation model;
D O I
10.1016/j.apenergy.2024.124973
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Machine learning models have made significant progress in load forecasting, but their forecast accuracy is limited in cases where historical load data is scarce. Inspired by the outstanding performance of large language models (LLMs) in computer vision and natural language processing, this paper aims to discuss the potential of large time series models in load forecasting with scarce historical data. Specifically, the large time series model is constructed as a time series generative pre-trained transformer (TimeGPT), which is trained on massive and diverse time series datasets consisting of 100 billion data points (e.g., finance, transportation, banking, web traffic, weather, energy, healthcare, etc.). Then, the scarce historical load data is used to fine-tune the TimeGPT, which helps it to adapt to the data distribution and characteristics associated with load forecasting. Simulation results show that TimeGPT outperforms the popular benchmarks for load forecasting on several real datasets with scarce training samples, particularly for short look-ahead times. However, it cannot be guaranteed that TimeGPT is always superior to benchmarks for load forecasting with scarce data, since the performance of TimeGPT may be affected by the distribution differences between the load data and the training data. In practical applications, operators can divide the historical data into a training set and a validation set, and then use the validation set loss to decide whether TimeGPT is the best choice for a specific dataset.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Implementation practice of short-term load forecasting in time series
    Fan, JY
    PROCEEDINGS OF THE AMERICAN POWER CONFERENCE, VOL 58, PTS I AND II, 1996, 58 : 214 - 218
  • [22] ADAPTIVE ONLINE LOAD FORECASTING VIA TIME-SERIES MODELING
    PAARMANN, LD
    NAJAR, MD
    ELECTRIC POWER SYSTEMS RESEARCH, 1995, 32 (03) : 219 - 225
  • [23] Day-Ahead Electricity Load Forecasting with Multivariate Time Series
    Crujido, Lorenz Jan C.
    Gozon, Clark Darwin M.
    Pallugna, Reuel C.
    MINDANAO JOURNAL OF SCIENCE AND TECHNOLOGY, 2023, 21 (02): : 95 - 115
  • [24] Electrical load forecasting in power systems based on quantum computing using time series-based quantum artificial intelligence
    Habibi, Mohammad Reza
    Golestan, Saeed
    Wu, Yanpeng
    Guerrero, Josep M.
    Vasquez, Juan C.
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [25] Intraday time series load forecasting using Bayesian deep learning method—a new approach
    D. Kiruthiga
    V. Manikandan
    Electrical Engineering, 2022, 104 : 1697 - 1709
  • [26] Time Series Analysis of Pulmonary Tuberculosis Incidence: Forecasting by Applying the Time Series Model
    Chan, Yinping
    Wu, Aiping
    Wang, Cuiling
    Zhou, Haiying
    Feng, Shuxiu
    ADVANCES IN APPLIED SCIENCE, ENGINEERING AND TECHNOLOGY, 2013, 709 : 819 - 822
  • [27] ARIMA Model for Accurate Time Series Stocks Forecasting
    Khan, Shakir
    Alghulaiakh, Hela
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (07) : 524 - 528
  • [28] A NEURAL NETWORK MODEL FOR TIME-SERIES FORECASTING
    Morariu, Nicolae
    Iancu, Eugenia
    Vlad, Sorin
    ROMANIAN JOURNAL OF ECONOMIC FORECASTING, 2009, 12 (04): : 213 - 223
  • [29] A Dilated Convolutional Based Model for Time Series Forecasting
    Mishra K.
    Basu S.
    Maulik U.
    SN Computer Science, 2021, 2 (2)
  • [30] Hybrid model with dynamic architecture for forecasting time series
    Gomes, Gecynalda Soares S.
    Maia, Andre Luis S.
    Ludermir, Teresa B.
    de Carvalho, Francisco de A. T.
    Araujo, Aluizio F. R.
    2006 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORK PROCEEDINGS, VOLS 1-10, 2006, : 3742 - +