Integrating autoencoder and decision tree models for enhanced energy consumption forecasting in microgrids: A meteorological data-driven approach in Djibouti

被引:11
作者
Fadoul, Fathi Farah [1 ,2 ]
Hassan, Abdoulaziz Ahmed [2 ]
Caglar, Ramazan [1 ]
机构
[1] Istanbul Tech Univ, Istanbul, Turkiye
[2] Univ Djibouti, Africa Ctr Excellence Logist & Transport CEALT, Djibouti, Djibouti
关键词
Energy management; Deep learning; Autoencoders; Decision trees; Meteorological data; Microgrid optimization; Energy consumption forecasting; Hyperparameter tuning;
D O I
10.1016/j.rineng.2024.103033
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
At this time, as the world and nations move to reduce the use of fossil fuels, research is oriented toward improving the energy consumption of people and buildings. Recent methods, mainly computing techniques such as deep learning, are proposed in the literature. This paper proposes a model that integrates the autoencoder with the decision tree model using six months of meteorological data, including solar radiation, wind speed, temperature, and other meteorological data. This study aims to advance the energy consumption prediction of loads connected to the microgrid. A case study of a microgrid park of a campus in Djibouti is presented to test the proposed model. Autoencoders were exploited to extract the main features of the meteorological data. Then the decision tree is proposed to predict the energy consumption using the resulting encoded features. The evaluation of the training of the autoencoder model gave a favorable result with a mean squared error of 0.002 and an R2 value of 0.99. Hyperparameter tuning scenarios facilitated the exploration of the decision tree model. Ensemble decision trees performed better than individual trees in this model, achieving a mean absolute error of 1.4 % and an R2 value of 0.997. It showed that hyperparameter tuning improved the results due to the best architecture fit for the decision tree. Moreover, the proposed model was validated by comparing it with the literature on KNN, SVR, and MLP models commonly used in microgrid energy management. The autoencoder decision tree outperformed other compared methods, achieving an explained variance of 0.997 and an MAE of 1.7 % in the standard decision tree regressor scenario. These results demonstrated the capabilities of machine learning and weather data. Combining an autoencoder and the decision tree model will open a new door to energy management improvement.
引用
收藏
页数:12
相关论文
共 45 条
[1]   Peer to Peer Distributed Energy Trading in Smart Grids: A Survey [J].
Abdella, Juhar ;
Shuaib, Khaled .
ENERGIES, 2018, 11 (06)
[2]   Microgrid-Level Energy Management Approach Based on Short-Term Forecasting of Wind Speed and Solar Irradiance [J].
Alhussein, Musaed ;
Haider, Syed Irtaza ;
Aurangzeb, Khursheed .
ENERGIES, 2019, 12 (08)
[3]  
[Anonymous], 2023, Genie Electrique, Modelisation, optimisation et gestion d'energie d'une centrale hybride a energie renouvelable
[4]  
Aslam S., 2021, A Survey on Deep Learning Methods for Power Load and Renewable Energy Forecasting in Smart Microgrids, DOI [10.1016/j.rser.2021.110992, DOI 10.1016/J.RSER.2021.110992]
[5]  
Bahramirad S., 2015, B. Uilding Resilient Integrated Grids: One Neighborhood at a Time, DOI [10.1109/MELE.2014.2380051, DOI 10.1109/MELE.2014.2380051]
[6]  
Bari A., 2014, Challenges in the Smart Grid Applications: an Overview, DOI [10.1155/2014/974682, DOI 10.1155/2014/974682]
[7]   Multiple power quality disturbances analysis in photovoltaic integrated direct current microgrid using adaptive morphological filter with deep learning algorithm [J].
Dash, P. K. ;
Mishra, S. P. ;
Prasad, Eluri N. V. D. V. ;
Jalli, Ravi Kumar .
APPLIED ENERGY, 2022, 309
[8]   Intelligent energy management for micro-grid based on deep learning LSTM prediction model and fuzzy decision-making [J].
El Bourakadi, Dounia ;
Yahyaouy, Ali ;
Boumhidi, Jaouad .
SUSTAINABLE COMPUTING-INFORMATICS & SYSTEMS, 2022, 35
[9]   Advanced control and energy management algorithm for a multi-source microgrid incorporating renewable energy and electric vehicle integration [J].
El Mezdi, Karim ;
El Magri, Abdelmounime ;
Bahatti, Lhoussain .
RESULTS IN ENGINEERING, 2024, 23
[10]   Evaluating and comparing machine learning approaches for effective decision making in renewable microgrid systems [J].
Elabbassi, Ismail ;
Khala, Mohamed ;
El yanboiy, Naima ;
Eloutassi, Omar ;
El hassouani, Youssef .
RESULTS IN ENGINEERING, 2024, 21