Smart City Gnosys

Smart city article details

Title Deep Learning-Based Home Energy Management Incorporating Vehicle-To-Home And Home-To-Vehicle Technologies For Renewable Integration
ID_Doc 17952
Authors Mahmoud M.; Ben Slama S.
Year 2025
Published Energies, 18, 1
DOI http://dx.doi.org/10.3390/en18010129
Abstract Smart cities embody a transformative approach to modernizing urban infrastructure and harness the power of deep learning (DL) and Vehicle-to-Home (V2H) technology to redefine home energy management. Neural network-based Q-learning algorithms optimize the scheduling of household appliances and the management of energy storage systems, including batteries, to maximize energy efficiency. Data preprocessing techniques, such as normalization, standardization, and missing value imputation, are applied to ensure that the data used for decision making are accurate and reliable. V2H technology allows for efficient energy exchange between electric vehicles (EVs) and homes, enabling EVs to act as both energy storage and supply sources, thus improving overall energy consumption and reducing reliance on the grid. Real-time data from photovoltaic (PV) systems are integrated, providing valuable inputs that further refine energy management decisions and align them with current solar energy availability. The system also incorporates battery storage (BS), which is critical in optimizing energy usage during peak demand periods and providing backup power during grid outages, enhancing energy reliability and sustainability. By utilizing data from a Tunisian weather database, smart cities significantly reduce electricity costs compared to traditional energy management methods, such as Dynamic Programming (DP), Rule-Based Systems, and Genetic Algorithms. The system’s performance is validated through robust AI models, performance metrics, and simulation scenarios, which test the system’s effectiveness under various energy demand patterns and changing weather conditions. These simulations demonstrate the system’s ability to adapt to different operational environments. © 2024 by the authors.
Author Keywords deep learning; home energy management; reinforcement learning; renewable energy; smart home automation


Similar Articles


Id Similarity Authors Title Published
17962 View0.902Aljohani A.Deep Learning-Based Optimization Of Energy Utilization In Iot-Enabled Smart Cities: A Pathway To Sustainable DevelopmentEnergy Reports, 12 (2024)
32700 View0.899Binyamin S.; Slama S.B.Intelligrid Ai: A Blockchain And Deep-Learning Framework For Optimized Home Energy Management With V2H And H2V IntegrationAI (Switzerland), 6, 2 (2025)
1342 View0.896Xin Q.; Alazab M.; Díaz V.G.; Montenegro-Marin C.E.; Crespo R.G.A Deep Learning Architecture For Power Management In Smart CitiesEnergy Reports, 8 (2022)
32373 View0.892Mithul Raaj A.T.; Balaji B.; R R S.A.P.; Naidu R.C.; Rajesh Kumar M.; Ramachandran P.; Rajkumar S.; Kumar V.N.; Aggarwal G.; Siddiqui A.M.Intelligent Energy Management Across Smart Grids Deploying 6G Iot, Ai, And Blockchain In Sustainable Smart CitiesIoT, 5, 3 (2024)
23309 View0.889Laroui M.; Dridi A.; Afifi H.; Moungla H.; Marot M.; Cherif M.A.Energy Management For Electric Vehicles In Smart Cities: A Deep Learning Approach2019 15th International Wireless Communications and Mobile Computing Conference, IWCMC 2019 (2019)
23183 View0.889Binbusayyis A.; Sha M.Energy Consumption Prediction Using Modified Deep Cnn-Bi Lstm With Attention MechanismHeliyon, 11, 1 (2025)
6496 View0.888Rojek I.; Mikołajewski D.; Galas K.; Piszcz A.Advanced Deep Learning Algorithms For Energy Optimization Of Smart CitiesEnergies, 18, 2 (2025)
11464 View0.888Suanpang P.; Jamjuntr P.; Jermsittiparsert K.; Kaewyong P.Autonomous Energy Management By Applying Deep Q-Learning To Enhance Sustainability In Smart Tourism CitiesEnergies, 15, 5 (2022)
6687 View0.884Rao B.S.; Aparna M.; Raju M.S.N.Advancing Smart City Energy Management: Very Short-Term Photovoltaic Power Generation Forecasting Using Multi-Scale Long Short-Term Memory Deep LearningBiomass and Solar-Powered Sustainable Digital Cities (2024)
37412 View0.88Ulloa-Vásquez F.; Heredia-Figueroa V.; Espinoza-Iriarte C.; Tobar-Ríos J.; Aguayo-Reyes F.; Carrizo D.; García-Santander L.Model For Identification Of Electrical Appliance And Determination Of Patterns Using High-Resolution Wireless Sensor Network For The Efficient Home Energy Consumption Based On Deep LearningEnergies, 17, 6 (2024)