Smart City Gnosys

Smart city article details

Title A Development Of Edge Computing Method In Integration With Iot System For Optimizing And To Produce Energy Efficiency System
ID_Doc 1456
Authors Asaad R.R.; Hani A.A.; Sallow A.B.; Abdulrahman S.M.; Ahmad H.B.; Subhi R.M.
Year 2024
Published 2024 4th International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2024
DOI http://dx.doi.org/10.1109/ICACITE60783.2024.10617436
Abstract The number of the Internet of Things (IoT) devices is growing, leading to increased generation of data at a level that has never been witnessed from the network edge. These pervading are through different industries: in the likes of healthcare, transportation, manufacturing, and smart cities, explicit needs call for effective data processing and analysis at the edge. This paper discusses the idea of edge computing in an IoT context, focusing on how this can best be optimized in terms of minimizing the two aforementioned areas to improve overall system performance. The traditional approach to data processing in IoT systems, which is cloud-centric,json, often experiences latency problems because data has to travel over distances to servers that are centralized for analysis. More so, the continuous transmission of voluminous raw data into the cloud is very consuming of the energy and weighs down the network bandwidth. That is where the edge computing comes into place, filling this gap through the relocation of computational tasks near the source, thereby reducing latency that translates to relieving the network from congestion. This paper tries to reflect key principles and benefits of edge computing in an IoT environment based on a comprehensive review of existing literature and relevant case studies. Near IoT devices, edge nodes enable computational capabilities. © 2024 IEEE.
Author Keywords Cloud-Centric; Edge Computing; Energy Efficiency; IoT; Latency


Similar Articles


Id Similarity Authors Title Published
40833 View0.929Abdulqader 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)
5342 View0.928Yu 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)
44385 View0.925Guarda T.; Torres W.Real-Time Iot With Edge Computing: Efficiency, Security, And Future TrendsLecture Notes in Computer Science, 15889 LNCS (2026)
57916 View0.924Zhang 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)
40785 View0.918Najem W.M.; Dubai N.J.; Ibadi N.A.Optimizing Edge Computing For Iot EcosystemsJournal of Information Systems Engineering and Management, 10, 17 (2025)
21849 View0.917Sulieman N.A.; Celsi L.R.; Li W.; Zomaya A.; Villari M.Edge-Oriented Computing: A Survey On Research And Use CasesEnergies, 15, 2 (2022)
4182 View0.913Kumar S.; Singh P.; Singh A.A Review Of Optimized Computational Strategies For Iot: Cloud, Fog, And Edge Computing ApproachesProceedings of 5th International Conference on Pervasive Computing and Social Networking, ICPCSN 2025 (2025)
32182 View0.908Kuchuk H.; Malokhvii E.Integration Of Iot With Cloud, Fog, And Edge Computing: A ReviewAdvanced Information Systems, 8, 2 (2024)
58104 View0.908Dustdar S.; Murturi I.Towards Distributed Edge-Based SystemsProceedings - 2020 IEEE 2nd International Conference on Cognitive Machine Intelligence, CogMI 2020 (2020)
19454 View0.905Gulhane M.; Tiwari A.; Bhattacharya S.; Kashid S.S.; Dhabliya D.; Gandhi Y.Developing Energy-Efficient Iot Architecture With Edge And Fog Computing For Smart Cities2025 International Conference on Emerging Smart Computing and Informatics, ESCI 2025 (2025)