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    Hybrid Deep Learning Model for Accurate Short-Term Electricity Price Forecasting

    Access Status
    In process
    Authors
    Moradzadeh, A.
    Mouhammadpourfard, M.
    Weng, Y.
    Pol, S.
    Muyeen, S M
    Date
    2025
    Type
    Conference Paper
    
    Metadata
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    Citation
    Moradzadeh, A. and Mouhammadpourfard, M. and Weng, Y. and Pol, S. and Muyeen, S.M. 2025. Hybrid Deep Learning Model for Accurate Short-Term Electricity Price Forecasting.
    Source Title
    2025 IEEE Texas Power and Energy Conference, TPEC 2025
    DOI
    10.1109/TPEC63981.2025.10906930
    Faculty
    Faculty of Science and Engineering
    School
    School of Elec Eng, Comp and Math Sci (EECMS)
    URI
    http://hdl.handle.net/20.500.11937/97501
    Collection
    • Curtin Research Publications
    Abstract

    Accurate short-term electricity price forecasting (STEPF) is critical for efficient energy market operations, guiding investment strategies, resource allocation, and consumer behavior. This study introduces a hybrid deep learning approach specifically designed to improve STEPF accuracy by leveraging historical Hourly Ontario Energy Price (HOEP) data from 2017 to 2019. The model integrates advanced techniques, including data preprocessing and denoising through a Stacked Denoising Autoencoder (SDAE), along with enhanced temporal modeling via Bidirectional Long Short-Term Memory (BiLSTM) and Gated Recurrent Unit (GRU) networks. By capturing the complex dynamics inherent in electricity pricing data, the proposed hybrid model significantly enhances forecasting accuracy. Trained on data from 2017 and 2018, with 2019 used for testing, the model achieves a strong correlation coefficient (R = 99.86%) and substantially lowers forecasting errors. Comparative evaluations against established forecasting methods highlight the model's superior performance. This work demonstrates the practical value of deep learning techniques in the energy sector, particularly in responding to the volatility of demand and supply in real-time electricity markets.

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