Smart City Gnosys

Smart city article details

Title Internet Of Things Dataset For Home Renewable Energy Management
ID_Doc 32981
Authors Ramadan R.A.
Year 2024
Published Data in Brief, 53
DOI http://dx.doi.org/10.1016/j.dib.2024.110166
Abstract Smart cities, as well as smart homes research, are becoming of concern, especially in the field of energy consumption and production. However, there is a lack in the dataset that can be used to simulate smart city energy consumption and prediction or even smart homes. Therefore, this paper provides a carefully generated dataset for smart home energy management simulation. Five datasets are generated and analysed to ensure suitability, including 20, 50, 100, and 200 homes across 365 days. For more accurate data, energy consumption and production for 50 homes are generated based on real input taken from a dataset for homes in Saudi Arabia. Due to the unavailability of a comprehensive dataset related to the complex scenario of smart home sensors, energy consumption, and peer-to-peer data exchange, synthetic data was generated to support the simulation of smart home energy generation and consumption. This synthetic data plays a crucial role in situations where simulating uncommon events, ensuring data availability, facilitating extensive experimentation and model validation, and enabling scalability are paramount. It offers a valuable opportunity to incorporate these rare yet significant occurrences into the simulation, particularly in the context of infrequent events, such as abnormal energy consumption patterns observed in smart homes. The generated data is analysed and validated in this article, ready to be used for many smart home and city research. © 2024 The Author(s)
Author Keywords AI, energy production; Dataset; IoT; Management; Renewable energy; Smart home


Similar Articles


Id Similarity Authors Title Published
9463 View0.858Singh T.; Solanki A.; Sharma S.K.Analytical Study Of Machine Learning Techniques On The Smart Home Energy ConsumptionAIP Conference Proceedings, 2938, 1 (2023)
51033 View0.852Aliero M.S.; Qureshi K.N.; Pasha M.F.; Jeon G.Smart Home Energy Management Systems In Internet Of Things Networks For Green Cities Demands And ServicesEnvironmental Technology and Innovation, 22 (2021)
9655 View0.851Kodali Y.; Kumar Y.V.P.Anova-Based Variance Analysis In Smart Home Energy Consumption Data Using A Case Study Of Darmstadt Smart City, Germany†Engineering Proceedings, 82, 1 (2024)