Improving long-term electricity time series forecasting in smart grid with a three-stage channel-temporal approach

被引:1
作者
Sun, Zhao [1 ,2 ]
Song, Dongjin [3 ]
Peng, Qinke [1 ]
Li, Haozhou [1 ]
Li, Pulin [4 ]
机构
[1] Xi An Jiao Tong Univ, Syst Engn Inst, Xian, Shaanxi, Peoples R China
[2] Eindhoven Univ Technol, Data Min Grp, Eindhoven, Netherlands
[3] Univ Connecticut, Dept Comp Sci & Engn, Storrs, CT USA
[4] Zhengzhou Univ, Sch Management, Zhengzhou, Henan, Peoples R China
基金
中国博士后科学基金;
关键词
Deep learning; Long-term time series forecasting; Electricity forecasting; Smart grid; Non-Transformer; PREDICTION;
D O I
10.1016/j.jclepro.2024.143051
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
-Transformer-based models have shown progress in addressing electricity time series forecasting challenges. However, as the forecasting horizon extends, the computational complexity required to capture long-term global correlations may limit their ability to utilize extensive historical data. This paper proposes a non-Transformer model named Three-Stage Channel-Temporal (TSCT), designed to be lightweight and capable of handling longer look-back windows for long-term electricity time series forecasting (LTESF) in smart grid contexts. TSCT sequentially derives feature maps along two dimensions, channel and temporal, focusing on 'which ' and 'when ', respectively. Moreover, its dynamic capacity to decompose and fuse information enables the disentanglement of intricate temporal patterns, highlighting the fundamental characteristics inherent in the time series. Extensive experiments demonstrate that our proposed TSCT outperforms state-of-the-art methods in smart grid scenarios using a commonly used Electricity dataset. Notably, the TSCT approach exhibits significantly higher efficiency compared to Transformer-based methods: an impressive 85% reduction in trainable parameters, a substantial 99% reduction in GPU memory usage, a 94% reduction in running time, and a 49% reduction in inference time. Code is available at: https://github.com/Zhao-Sun/TSCT.
引用
收藏
页数:12
相关论文
共 52 条
  • [21] Dynamic graph structure learning for multivariate time series forecasting
    Li, Zhuo Lin
    Zhang, Gao Wei
    Yu, Jie
    Xu, Ling Yu
    [J]. PATTERN RECOGNITION, 2023, 138
  • [22] Liu B., 2024, Appl Math Nonlinear Sci., V9, P1, DOI [10.2478/amns.2023.2.01310, DOI 10.2478/AMNS.2023.2.01310]
  • [23] Liu Minhao, 2022, ADV NEURAL INFORM PR
  • [24] Pre-train, Prompt, and Predict: A Systematic Survey of Prompting Methods in Natural Language Processing
    Liu, Pengfei
    Yuan, Weizhe
    Fu, Jinlan
    Jiang, Zhengbao
    Hayashi, Hiroaki
    Neubig, Graham
    [J]. ACM COMPUTING SURVEYS, 2023, 55 (09)
  • [25] A novel reconciliation approach for hierarchical electricity consumption forecasting based on resistant regression
    Meira, Erick
    Lila, Mauricio Franca
    Oliveira, Fernando Luiz Cyrino
    [J]. ENERGY, 2023, 269
  • [26] Short-term electric load forecasting using an EMD-BI-LSTM approach for smart grid energy management system
    Mounir, Nada
    Ouadi, Hamid
    Jrhilifa, Ismael
    [J]. ENERGY AND BUILDINGS, 2023, 288
  • [27] Short-term forecasting electricity load by long short-term memory and reinforcement learning for optimization of hyper-parameters
    Nguyen, Ngoc Anh
    Dang, Tien Dat
    Verdu, Elena
    Solanki, Vijender Kumar
    [J]. EVOLUTIONARY INTELLIGENCE, 2023, 16 (05) : 1729 - 1746
  • [28] Nie Y., 2023, 2023 INT C LEARN REP
  • [29] Nti IK, 2020, J BIG DATA-GER, V7, DOI [10.1186/s43067-020-00021-8, 10.1186/s40537-020-00299-5]
  • [30] Oreshkin B. N., 2019, INT CONFER ENCE LEA, DOI DOI 10.48550/ARXIV.1905.10437