Comparative study of long short-term memory (LSTM), bidirectional LSTM, and traditional machine learning approaches for energy consumption prediction

被引:5
作者
Alizadegan, Hamed [1 ]
Malki, Behzad Rashidi [2 ]
Radmehr, Arian [3 ]
Karimi, Hossein [4 ]
Ilani, Mohsen Asghari [5 ]
机构
[1] Islamic Azad Univ, Dept Comp & Informat Technol Engn, Qazvin Branch, Qazvin, Iran
[2] Islamic Azad Univ Bonab, Dept Comp, Bonab, East Azerbaijan, Iran
[3] Islamic Azad Univ, Dept Comp Engn, South Tehran Branch, Tehran, Iran
[4] Islamic Azad Univ, Dept Elect Comp & IT Engn, Qazvin Branch, Qazvin, Iran
[5] Univ Tehran, Coll Engn, Sch Mech Engn, Tehran, Iran
关键词
Time series forecasting; long short-term memory; bidirectional long short-term memory; deep learning; autoregressive integrated moving average; seasonal autoregressive integrated moving average; energy consumption prediction; NETWORKS; MODEL;
D O I
10.1177/01445987241269496
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
Responsible, efficient, and environmentally conscious energy consumption practices are increasingly essential for ensuring the reliability of the modern electricity grid. This study focuses on leveraging time series analysis to improve forecasting accuracy, crucial for various application domains where real-world time series data often exhibit complex, non-linear patterns. Our approach advocates for utilizing long short-term memory (LSTM) and bidirectional long short-term memory (Bi-LSTM) models for precise time series forecasting. To ensure a fair evaluation, we compare the performance of our proposed approach with traditional neural networks, time-series forecasting methods, and conventional decline curves. Additionally, individual models based on LSTM, Bi-LSTM, and other machine learning methods are implemented for a comprehensive assessment. Experimental results consistently demonstrate that our proposed model outperforms all benchmarking methods in terms of mean absolute error (MAE) across most datasets. Addressing the imbalance between activations by consumer and prosumer groups, our predictions show superior performance compared to several traditional forecasting methods, such as the autoregressive integrated moving average (ARIMA) model and seasonal autoregressive integrated moving average (SARIMA) model. Specifically, the root mean square error (RMSE) of Bi-LSTM is 5.35%, 46.08%, and 50.6% lower than LSTM, ARIMA, and SARIMA, respectively, on the May test data.
引用
收藏
页码:281 / 301
页数:21
相关论文
共 36 条
  • [1] Improving time series forecasting using LSTM and attention models
    Abbasimehr, Hossein
    Paki, Reza
    [J]. JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 2022, 13 (01) : 673 - 691
  • [2] An optimized model using LSTM network for demand forecasting
    Abbasimehr, Hossein
    Shabani, Mostafa
    Yousefi, Mohsen
    [J]. COMPUTERS & INDUSTRIAL ENGINEERING, 2020, 143
  • [3] ajse.aiub, VIEW REV DIFFERENT E
  • [4] Alizadegan H., 2024, PREPRINT, DOI [10.20944/PREPRINTS202405.0994.V1, DOI 10.20944/PREPRINTS202405.0994.V1]
  • [5] Alizadegan H., 2024, RES SQUARE, DOI [10.21203/RS.3.RS-4390390/V1, DOI 10.21203/RS.3.RS-4390390/V1]
  • [6] [Anonymous], 2016, 2016 31 YOUTH ACAD A
  • [7] Chandran P., 2024, P 11 INT C SIGN PROC, P291
  • [8] Leveraging social media news to predict stock index movement using RNN-boost
    Chen, Weiling
    Yeo, Chai Kiat
    Lau, Chiew Tong
    Lee, Bu Sung
    [J]. DATA & KNOWLEDGE ENGINEERING, 2018, 118 : 14 - 24
  • [9] Comparing Long Short-Term Memory (LSTM) and bidirectional LSTM deep neural networks for power consumption prediction
    da Silva, Davi Guimaraes
    Meneses, Anderson Alvarenga de Moura
    [J]. ENERGY REPORTS, 2023, 10 : 3315 - 3334
  • [10] Deep learning with long short-term memory networks for financial market predictions
    Fischer, Thomas
    Krauss, Christopher
    [J]. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2018, 270 (02) : 654 - 669