Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/22495
Title: Deep autoencoder with localized stochastic sensitivity for short-term load forecasting
Authors: Wang, T
Lai, CS
Ng, WWY
Pan, K
Zhang, M
Vaccaro, A
Lai, LL
Keywords: Short-term load forecasting;deep autoencoder;deep learning;stochastic sensitivity
Issue Date: 18-Mar-2021
Publisher: Elsevier
Citation: Wang T, et al. (2021) 'Deep autoencoder with localized stochastic sensitivity for short-term load forecasting', International Journal of Electrical Power & Energy Systems, 130, 106954, pp. 1 - 15. doi: 10.1016/j.ijepes.2021.106954.
Abstract: This paper presents a short-term electric load forecasting model based on deep autoencoder with localized stochastic sensitivity (D-LiSSA). D-LiSSA can learn informative hidden representations from unseen samples by minimizing the perturbed error (including the training error and stochastic sensitivity) from historical load data. Specifically, this general deep autoencoder network as a deep learning model improves prediction accuracy and reliability. Moreover, a nonlinear fully connected feedforward neural network as a regression layer is applied to forecast the short-term load, with the generalization capability of the proposed model using hidden representations learned by D-LiSSA. The performance of D-LiSSA is evaluated using real-world public electric load markets of France (FR), Germany (GR), Romania (RO), and Spain (ES) from ENTSO-E. Extensive experimental results and comparisons with the classical and state-of-the-art models show that D-LiSSA yields accurate load forecasting results and achieves desired reliable capability. For instance, with the French case, D-LiSSA yields the lowest mean absolute error, mean absolute percentage error, root mean squared error; providing up to 61.89%, 63.20%, and 56.40% forecasting accuracy improvements as compared to the benchmark model for forecasting hourly horizon, respectively.
URI: https://bura.brunel.ac.uk/handle/2438/22495
DOI: https://doi.org/10.1016/j.ijepes.2021.106954
ISSN: 0142-0615
Other Identifiers: ORCID iD: Chun Sing Lai https://orcid.org/0000-0002-4169-4438
106954
Appears in Collections:Dept of Electronic and Electrical Engineering Research Papers

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