Smart City Gnosys

Smart city article details

Title An Integrated Framework For Real-Time Analysis And Observability Of Wireless Sensor Data Using Aws Edge Service Capabilities
ID_Doc 8445
Authors Mohan S.; Panda S.
Year 2024
Published Proceedings of 2024 IEEE International Conference of Electron Devices Society Kolkata Chapter, EDKCON 2024
DOI http://dx.doi.org/10.1109/EDKCON62339.2024.10870672
Abstract Wireless sensor networks generate vast data offering insightful information for applications from industrial monitoring to smart cities. Optimizing energy consumption in these networks is critical for increasing the efficiency and lifespan of these networks. Earlier cloud computing methodology usually faces challenges in bandwidth, latency and reliability. This research work identifies the current gap in the industry and adds edge computing in wireless sensor networks in processing huge data using AWS IoT Greengrass and explores the novel use case of visualizing AWS sensor data with AWS Quick Sight. The implementation of edge computing will reduce network congestion and lessen costs related to infrastructure. This is a key factor which not only improves the performance of IoT applications but also helps in scalability of cloud -based infrastructure. Also, it's imperative that most IoT applications deal with time series data and latency is a pivotal factor. In addition to the proposal of edge computing this work also incorporated a comparative study of edge computing and traditional cloud computing highlighting better latency, efficiency, reliability and scalability. © 2024 IEEE.
Author Keywords AWS IoT Greengrass; AWS Quick Sight; Edge Computing; Internet of Thing; Wireless sensors


Similar Articles


Id Similarity Authors Title Published
1456 View0.889Asaad R.R.; Hani A.A.; Sallow A.B.; Abdulrahman S.M.; Ahmad H.B.; Subhi R.M.A Development Of Edge Computing Method In Integration With Iot System For Optimizing And To Produce Energy Efficiency System2024 4th International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2024 (2024)
51397 View0.879Nikravan M.; Haghi Kashani M.Smart Sensor Networks Based On Edge TechnologiesBlockchain and Digital Twin for Smart Healthcare (2025)
27257 View0.869Ficili I.; Giacobbe M.; Tricomi G.; Puliafito A.From Sensors To Data Intelligence: Leveraging Iot, Cloud, And Edge Computing With AiSensors, 25, 6 (2025)
44385 View0.869Guarda T.; Torres W.Real-Time Iot With Edge Computing: Efficiency, Security, And Future TrendsLecture Notes in Computer Science, 15889 LNCS (2026)
5342 View0.867Yu W.; Liang F.; He X.; Hatcher W.G.; Lu C.; Lin J.; Yang X.A Survey On The Edge Computing For The Internet Of ThingsIEEE Access, 6 (2017)
31982 View0.867Salama R.; Mohapatra H.; Al-Turjman F.Integrating Edge Computing And Ai For Energy-Efficient Data Processing In Wireless Sensor NetworkIntegrating Intelligent Control Systems With Sensor Technologies (2025)
40833 View0.866Abdulqader A.F.; Salih M.M.M.; Shaker N.H.; Sajid W.A.; Qasem W.; Gajewska A.; Khlaponin D.Optimizing Iot Performance Through Edge Computing: Reducing Latency, Enhancing Bandwidth Efficiency, And Strengthening Security For 2025 ApplicationsConference of Open Innovation Association, FRUCT (2024)
48501 View0.865Poojara S.; Dehury C.K.; Jakovits P.; Srirama S.N.Serverless Data Pipelines For Iot Data Analytics: A Cloud Vendors Perspective And SolutionsPredictive Analytics in Cloud, Fog, and Edge Computing: Perspectives and Practices of Blockchain, IoT, and 5G (2022)
32182 View0.863Kuchuk H.; Malokhvii E.Integration Of Iot With Cloud, Fog, And Edge Computing: A ReviewAdvanced Information Systems, 8, 2 (2024)
57916 View0.863Zhang Y.; Feng J.Towards A Smart And Sustainable Future With Edge Computing-Powered Internet Of Things: Fundamentals, Applications, Challenges, And Future Research DirectionsJournal of The Institution of Engineers (India): Series B, 106, 2 (2025)