Smart City Gnosys

Smart city article details

Title Data-Driven Energy Resource Planning For Smart Cities
ID_Doc 17419
Authors Mulero S.; Hernandez J.L.; Vicente J.; De Viteri P.S.; Larrinaga F.
Year 2020
Published GIoTS 2020 - Global Internet of Things Summit, Proceedings
DOI http://dx.doi.org/10.1109/GIOTS49054.2020.9119561
Abstract Cities are growing and, therefore, the primary needs, such as the energy resources. Hence, managing them in the proper way becomes essential for a sustainable growth. This paper proposes a data-driven tool based on IoT data with the aim of reducing the gap between demand and consumption, minimizing the energy losses. Smart and efficient energy planning is the ultimate objective, where the final energy usage is fitted into the predicted demand. One day time horizon is used in order to provide energy managers, ESCOs or urban planners with an accurate forecast about the required energy. This service will be available on the urban platform of Vitoria under the context of the SmartEnCity project (GA # 691883). However, the training data has been captured from CITyFiED project (GA # 609129), which is energetically speaking similar. The city elements included in the training model have been characterized based on data from combined static and dynamic data to adapt the context through machine-learning techniques. © 2020 IEEE.
Author Keywords Digital Services; Energy efficiency; Energy Planning; Machine learning; Smart Cities


Similar Articles


Id Similarity Authors Title Published
35091 View0.887Ahmad M.; Mumtaz R.; Khan M.A.Leveraging Iot And Machine Learning For Smart Urban PlanningLeveraging IoT and Machine Learning for Smart Urban Planning (2025)
42825 View0.879Yoon G.; Park S.; Park S.; Lee T.; Kim S.; Jang H.; Lee S.; Park S.Prediction Of Machine Learning Base For Efficient Use Of Energy Infrastructure In Smart CityProceedings - 2019 International Conference on Computing, Electronics and Communications Engineering, iCCECE 2019 (2019)
50225 View0.877Matheri A.N.; Ngila J.C.; Njenga C.K.; Belaid M.; Van Rensburg N.J.Smart City Energy Trend Transformation In The Fourth Industrial Revolution Digital DisruptionIEEE International Conference on Industrial Engineering and Engineering Management (2019)
22431 View0.876Rajaan R.; Baishya B.K.; Rao T.V.; Pattanaik B.; Tripathi M.A.; Anitha R.Efficient Usage Of Energy Infrastructure In Smart City Using Machine LearningEAI Endorsed Transactions on Internet of Things, 10 (2024)
10564 View0.873Ning M.A.Artificial Intelligence-Driven Decision Support Systems For Sustainable Energy Management In Smart CitiesInternational Journal of Advanced Computer Science and Applications, 15, 9 (2024)
60728 View0.872Dhabliya D.; Gopalakrishnan S.; Mudigonda A.; Omirbayevna T.G.; Rajalakshmi K.; Kulshreshtha K.; Shnain A.H.; Krishnabhargavi Y.Utilizing Big Data And Environmentally-Focused Innovations To Create Smart, Sustainable Cities By Integrating Energy Management, Energy-Efficient Buildings, Pollution Mitigation, And Urban CirculationInternational Conference for Technological Engineering and its Applications in Sustainable Development, ICTEASD 2023 (2023)
23190 View0.87Hrnjica B.; Mehr A.D.Energy Demand Forecasting Using Deep LearningEAI/Springer Innovations in Communication and Computing (2020)
50953 View0.868Tripathy N.; Tripathy S.S.Smart Green Cities Using Iot-Based Deep Reinforcement Learning Energy ManagementInternet of Things and Big Data Analytics for a Green Environment (2024)
35924 View0.868Deepica S.; Kalavathi S.; Angelin Blessy J.; Vianny D.M.M.Machine Learning Based Approach For Energy Management In The Smart City RevolutionHybrid Intelligent Approaches for Smart Energy: Practical Applications (2022)
17962 View0.867Aljohani A.Deep Learning-Based Optimization Of Energy Utilization In Iot-Enabled Smart Cities: A Pathway To Sustainable DevelopmentEnergy Reports, 12 (2024)