Smart City Gnosys

Smart city article details

Title A Model Based Decision Support System For Smart Cities
ID_Doc 2678
Authors Zaman M.
Year 2023
Published Proceedings - 2023 IEEE International Conference on Smart Computing, SMARTCOMP 2023
DOI http://dx.doi.org/10.1109/SMARTCOMP58114.2023.00065
Abstract The escalating population growth and urbanization have led to a surge in the demand for smart cities. Nonetheless, handling and evaluating the vast data produced by Internet of Things (IoT) sensors requires significant effort. Therefore, implementing intelligent decision support systems is crucial for analyzing real-time data and optimizing city operations while tackling uncertain events. This study discusses the architectural flow diagram of a smart city decision support system that employs reinforcement learning techniques to enhance traffic management, minimize energy consumption, elevate public safety, and reduce risks in a constantly changing and unpredictable environment. This system comprises various components that work in tandem to provide customized real-time recommendations for a given situation. The capacity of the system to produce recommendations in real-time while taking into account the likelihood of various outcomes has the potential to enhance performance and facilitate more efficient decision-making in intricate settings. In general, this system will exhibit the capability to improve emergency response and public safety to a considerable extent in smart cities.
Author Keywords Decision support system; Reinforcement learning; Smart cities; Uncertain events


Similar Articles


Id Similarity Authors Title Published
32345 View0.889Ahmed Z.E.; Hashim A.H.A.; Mokhtar R.A.; Saeed M.M.Intelligent Decision Support Systems: Transforming Smart Cities Management1st International Conference on Emerging Technologies for Dependable Internet of Things, ICETI 2024 (2024)
6945 View0.882Rodriguez E.; Edwards J.S.Ai In Smart Cities Development: A Perspective Of Strategic Risk ManagementEuropean Conference on the Impact of Artificial Intelligence and Robotics, ECIAIR 2019 (2019)
19712 View0.873Banerjee S.P.; Banerjee P.; Gupta R.; Saha S.; Jain D.Development Of Internet Of Things Products For Smart CitiesComputational Intelligence in Urban Infrastructure (2023)
17357 View0.872Ma M.; Preum S.M.; Ahmed M.Y.; Tärneberg W.; Hendawi A.; Stankovic J.A.Data Sets, Modeling, And Decision Making In Smart Cities: A SurveyACM Transactions on Cyber-Physical Systems, 4, 2 (2019)
27174 View0.864Dias T.; Fonseca T.; Vitorino J.; Martins A.; Malpique S.; Praça I.From Data To Action: Exploring Ai And Iot-Driven Solutions For Smarter CitiesLecture Notes in Networks and Systems, 740 LNNS (2023)
32344 View0.864Gaur L.; Agarwal V.; Chatterjee P.Intelligent Decision Support Systems For Smart City ApplicationsIntelligent Decision Support Systems for Smart City Applications (2022)
14646 View0.863Sasikumar A.; Ravi L.; Devarajan M.; Kotb H.; Subramaniyaswamy V.Cognitive Computing System-Based Dynamic Decision Control For Smart City Using Reinforcement Learning ModelCognitive Analytics and Reinforcement Learning: Theories, Techniques and Applications (2024)
22924 View0.862Naaz S.; Parveen S.; Khan I.R.; Tanweer S.Empowering Smart Cities Through Iot And Ai: Enhancing Decision-Making For A Data-Driven FutureICDT 2025 - 3rd International Conference on Disruptive Technologies (2025)
23044 View0.862Revathy G.; Thangavel M.; Senthilvadivu S.; Savithri M.C.Enabling Smart Cities: Ai-Powered Prediction Models For Urban Traffic Optimization4th International Conference on Sentiment Analysis and Deep Learning, ICSADL 2025 - Proceedings (2025)
5173 View0.86Zheng Y.; Hao Q.; Wang J.; Gao C.; Chen J.; Jin D.; Li Y.A Survey Of Machine Learning For Urban Decision Making: Applications In Planning, Transportation, And HealthcareACM Computing Surveys, 57, 4 (2024)