Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/28231
Title: Comparative Analysis of Hybrid Deep Learning Frameworks for Energy Forecasting
Authors: Jogunola, O
Ajagun, A. S
Bamidele, A
Aibinu, A. M
Ojo, J. A
Keywords: Hybrid deep learning
autoencoder
convolutional neural network
energy consumption prediction
Bidirectionallong short-term memory
Issue Date: 2021
Publisher: 5th International Conference on Future Networks & Distributed Systems(ICFNDS 2021)
Citation: Jogunola O., Ajagun A.S., Bamidele A., Aibinu A.M., and Ojo J.A. (2021). Comparative Analysis of Hybrid Deep Learning Frameworks for Energy Forecasting. 5th International Conference on Future Networks & Distributed Systems(ICFNDS 2021), December 15–16, 2021, Dubai, United Arab Emirates. ACM, New York, NY, USA, 6 pages. https://doi.org/10.1145/3508072.3508105.
Abstract: As energy forecasting is paramount to efficient grid planning, this work presents a comparative analysis of different hybrid deep learning frameworks for energy forecasting in applications such as energy consumption and trading. Specifically, we developed hybrid architectures comprising of Convolutional Neural Network (CNN), an Autoencoder (AE), Long Short-Term Memory (LSTM) and Bi-directional LSTM (BLSTM). We use the individual household electric power consumption dataset by University of California, Irvine to evaluate the proposed frameworks. We evaluated and compared the result of these frameworks using several error metrics. The results show an average MSE of ∼ 0.01 across all developed frameworks. In addition, the CNN-LSTM framework performed the least with a 20% and 10% higher RMSE and MAE to other frameworks respectively, while CNN-BiLSTM achieved the least computation time.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/28231
Appears in Collections:Electrical/Electronic Engineering

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