Predicting short-term energy usage in a smart home using hybrid deep learning models

Author:

Ou Ali Imane Hammou,Agga Ali,Ouassaid Mohammed,Maaroufi Mohamed,Elrashidi Ali,Kotb Hossam

Abstract

The forecasting of home energy consumption is a crucial and challenging topic within the realm of artificial intelligence (AI)-enhanced energy management in smart grids (SGs). The primary goal of this study is to provide accurate energy consumption forecasts for a smart home. Two deep learning models are implemented: ConvLSTM, which combines convolutional operations with Long Short-Term Memory (LSTM), and the CNN-LSTM model, which synergizes Convolutional Neural Networks (CNN) and LSTM networks. Both hybrid models offer a comprehensive approach to modeling complex relationships in spatial and temporal patterns. Additionally, two baseline models—LSTM and CNN—are employed for comparative analysis. Utilizing real data from a smart home in Houston, Texas, the results demonstrate that both the hybrid models deliver highly accurate predictions for energy consumption. However, the ConvLSTM model outperforms all proposed models, improving predictions in terms of mean absolute percentage error by 4.52%, 9.59%, and 10.53% for 1 day, 3 days, and 6 days in advance, respectively.

Publisher

Frontiers Media SA

Reference42 articles.

1. Short-term self consumption PV plant power production forecasts based on hybrid CNN-LSTM, ConvLSTM models;Agga;Renew. Energy,2021

2. An accurate and fast converging short-term load forecasting model for industrial applications in a smart grid;Ahmad;IEEE Trans. Industrial Inf.,2016

3. Seasonal decomposition of electricity consumption data;Ahmad;Rev. Integr. Bus. Econ. Res.,2017

4. Short-term electricity demand forecasting with MARS, SVR and ARIMA models using aggregated demand data in Queensland, Australia;Al-Musaylh;Adv. Eng. Inf.,2018

5. Deep neural networks for energy load forecasting;Amarasinghe,2017

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