Smart City Gnosys

Smart city article details

Title An Artificial Intelligence Mechanism For The Prediction Of Signal Strength In Drones To Iot Devices In Smart Cities
ID_Doc 7643
Authors Refaai M.R.A.; Dattu V.S.N.C.H.; Niranjana Murthy H.S.; Pramod Kumar P.; Kannadasan B.; Diriba A.
Year 2022
Published Advances in Materials Science and Engineering, 2022
DOI http://dx.doi.org/10.1155/2022/7387346
Abstract Drones, the Internet of Things (IoT), and Artificial Intelligence (AI) could be used to create extraordinary responses to today's difficulties in smart city challenges. A drone, which would be effectively a data-gathering device, could approach regions that become complicated, dangerous, or even impossible to achieve for individuals. In addition to interacting with one another, drones must maintain touch with some other ground-based entities, including IoT sensors, robotics, and people. Throughout this study, an intelligent approach for predicting the signal power from a drone to IoT applications in smart cities is presented in terms of maintaining internet connectivity, offering the necessary quality of service (QoS), and determining the drone's transmission range offered. Predicting signal power and fading channel circumstances enables the adaptable transmission of data, which improves QoS for endpoint users/devices while lowering transmitting data power usage. Depending on many relevant criteria, an artificial neural network (ANN)-centered precise and effective method is provided to forecast the signal strength from such drones. The signal strength estimations are also utilized to forecast the drone's flight patterns. The results demonstrate that the proposed ANN approach has an excellent correlation with the verification data collected through computations, with the determination of coefficient R2 values of 0.97 and 0.98, correspondingly, for changes in drone height and distances from a drone. Furthermore, the finding shows that signal distortions could be considerably decreased and strengthened. © 2022 Mohamad Reda A. Refaai et al.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
42886 View0.975Alsamhi S.H.; Almalki F.A.; Ma O.; Ansari M.S.; Lee B.Predictive Estimation Of Optimal Signal Strength From Drones Over Iot Frameworks In Smart CitiesIEEE Transactions on Mobile Computing, 22, 1 (2023)
21094 View0.868Kumar R.S.; LNC Prakash K.; Suryanarayana G.Drones Enable Iot Applications For Smart CitiesDrone Technology: Future Trends and Practical Applications (2023)
34129 View0.86Hoque M.A.; Hossain M.; Noor S.; Islam S.M.R.; Hasan R.Iotaas: Drone-Based Internet Of Things As A Service Framework For Smart CitiesIEEE Internet of Things Journal, 9, 14 (2022)
59637 View0.86Jain I.; Vikas; Gautam A.Unleashing The Potential Of Haps With Ai: Ann-Based Signal Strength Prediction And Dataset Generation Using Gans And VaesWireless Personal Communications (2025)
14923 View0.859Katna S.; Singh S.K.; Kumar S.; Manro D.; Chhabra A.; Sharma S.K.Communication Systems For Drone Swarms And Remote OperationsAI Developments for Industrial Robotics and Intelligent Drones (2024)
46449 View0.858Hajjaj S.S.H.; Moktar M.H.; Weng L.Y.Review Of Implementing The Internet Of Things (Iot) For Robotic Drones (Iot Drones)E3S Web of Conferences, 477 (2024)
3633 View0.854Yang Y.; Ma R.; Zhou F.A Patrol Platform Based On Unmanned Aerial Vehicle For Urban Safety And Intelligent Social GovernanceInternational Journal of Advanced Computer Science and Applications, 15, 4 (2024)
33786 View0.853Ashraf S.N.; Manickam S.; Zia S.S.; Abro A.A.; Obaidat M.; Uddin M.; Abdelhaq M.; Alsaqour R.Iot Empowered Smart Cybersecurity Framework For Intrusion Detection In Internet Of DronesScientific Reports, 13, 1 (2023)
3930 View0.853Kaur S.; Arya N.; Singh S.; Rani A.A Quality Of Service-Oriented Cooperative Drone-Iot Network FrameworkProgressive Computational Intelligence, Information Technology and Networking (2025)
21071 View0.851Prabu B.; Malathy R.; Taj M.N.A.G.; Madhan N.Drone Networks And Monitoring Systems In Smart CitiesAI-Centric Smart City Ecosystems: Technologies, Design and Implementation (2022)