Smart City Gnosys

Smart city article details

Title Recent Developments In Ai And Ml For Iot: A Systematic Literature Review On Lorawan Energy Efficiency And Performance Optimization
ID_Doc 44561
Authors Alkhayyal M.; Mostafa A.
Year 2024
Published Sensors, 24, 14
DOI http://dx.doi.org/10.3390/s24144482
Abstract The field of the Internet of Things (IoT) is dominating various areas of technology. As the number of devices has increased, there is a need for efficient communication with low resource consumption and energy efficiency. Low Power Wide Area Networks (LPWANs) have emerged as a transformative technology for the IoT as they provide long-range communication capabilities with low power consumption. Among the various LPWAN technologies, Long Range Wide Area Networks (LoRaWAN) are widely adopted due to their open standard architecture, which supports secure, bi-directional communication and is particularly effective in outdoor and complex urban environments. This technology is helpful in enabling a variety of IoT applications that require wide coverage and long battery life, such as smart cities, industrial IoT, and environmental monitoring. The integration of Machine Leaning (ML) and Artificial Intelligence (AI) into LoRaWAN operations has further enhanced its capability and particularly optimized resource allocation and energy efficiency. This systematic literature review provides a comprehensive examination of the integration of ML and AI technologies in the optimization of LPWANs, with a specific focus on LoRaWAN. This review follows the PRISMA model and systematically synthesizes current research to highlight how ML and AI enhance operational efficiency, particularly in terms of energy consumption, resource management, and network stability. The SLR aims to review the key methods and techniques that are used in state-of-the-art LoRaWAN to enhance the overall network performance. We identified 25 relevant primary studies. The study provides an analysis of key findings based on research questions on how various LoRaWAN parameters are optimized through advanced ML, DL, and RL techniques to achieve optimized performance. © 2024 by the authors.
Author Keywords AI; energy efficiency; IoT; LoRaWAN; ML; network performance; resource management; sensors


Similar Articles


Id Similarity Authors Title Published
53747 View0.924Aggarwal S.; Nasipuri A.Survey And Performance Study Of Emerging Lpwan Technologies For Iot ApplicationsHONET-ICT 2019 - IEEE 16th International Conference on Smart Cities: Improving Quality of Life using ICT, IoT and AI (2019)
56601 View0.923Mousavi S.M.; Khademzadeh A.; Rahmani A.M.The Role Of Low-Power Wide-Area Network Technologies In Internet Of Things: A Systematic And Comprehensive ReviewInternational Journal of Communication Systems, 35, 3 (2022)
35791 View0.923Pullagura L.; Kumari N.V.; Katta S.K.G.Lpwan Communication-Based Ml For Iot NetworksLow-Power Wide Area Network for Large Scale Internet of Things: Architectures, Communication Protocols and Recent Trends (2024)
35564 View0.923Sneha S.; Malik P.; Das S.; Inthiyaz S.Long-Range Technology-Enabled Smart Communication: Challenges And ComparisonJournal of Circuits, Systems and Computers, 32, 10 (2023)
40737 View0.92Anand N.; Parwekar P.; Sharma A.Optimized Lorawan Architectures: Enhancing Energy Efficiency And Long-Range Connectivity In Iot Networks For Sustainable, Low-Power Solutions And Future Integrations With Edge Computing And 5GJournal of Intelligent Systems and Internet of Things, 13, 2 (2024)
35771 View0.915Marini R.; Mikhaylov K.; Pasolini G.; Buratti C.Low-Power Wide-Area Networks: Comparison Of Lorawan And Nb-Iot PerformanceIEEE Internet of Things Journal, 9, 21 (2022)
35644 View0.915Cotrim J.R.; Kleinschmidt J.H.Lorawan Mesh Networks: A Review And Classification Of Multihop CommunicationSensors (Switzerland), 20, 15 (2020)
35794 View0.913Mroue M.; Ramadan A.; Nasser A.; Zaki C.Lpwan Technologies In Smart Cities: A Comparative Analysis Of Lora, Sigfox, And Lte-MLecture Notes in Networks and Systems, 1057 LNNS (2024)
35638 View0.909Basford, PJ; Bulot, FMJ; Apetroaie-Cristea, M; Cox, SJ; Ossont, SJLorawan For Smart City Iot Deployments: A Long Term EvaluationSENSORS, 20, 3 (2020)
23857 View0.908Kulkarni P.; Pradeep B.; Raza U.; Lakas A.Enhancing Lorawan-Based Connectivity For Scalable Smart City ApplicationsInternational Symposium on Advanced Networks and Telecommunication Systems, ANTS (2023)