Smart City Gnosys

Smart city article details

Title A Deep Learning Framework For Iot Lightweight Traffic Multi-Classification: Smart-Cities
ID_Doc 1350
Authors Mudarakola L.P.; Bukkarayasamudram V.K.; Jadhav S.D.; Goviraboyina S.S.; Sharma S.; Mukherjee S.; Reddy P.C.S.
Year 2024
Published International Journal of Sensors, Wireless Communications and Control, 14, 3
DOI http://dx.doi.org/10.2174/0122103279292479240226111739
Abstract Aims and Background: Increased traffic volume is a major challenge for effective network management in the wake of the proliferation of mobile computing and the Internet of Things (IoT). Earlier models surrender efficiency to achieve high-precision classification outcomes, which are no longer fitting for limited assets in edge network circumstances, making traffic classification a difficult task for network administrators everywhere. Given the nature of the problem, the current state of the art in traffic classification is characterized by extremely high computational complexity and large parameters. Methodology: To strike a clever balance between performance and size, we present a deep learning (DL)-based traffic classification model. We begin by decreasing the amount of model parameters and calculations by modifying the model's scale, width, and resolution. To further improve the capability of feature extraction at the traffic flow level, we secondly incorporate accurate geographical information on the attention mechanism. Thirdly, we get multiscale flow-level features by employing lightweight multiscale feature fusion. Results: The results of our experiments demonstrate that our model has high classification accuracy and efficient operation. Our study presents a traffic categorization model with an accuracy of over 99.82%, a parameter reduction of 0.26M, and a computation reduction of 5.26M. Conclusions: Therefore, this work offers a practical design used in a genuine IoT situation, where IoT traffic and tools' profiles are anticipated and classified while easing the data dispensation in the higher levels of an end-to-end communication strategy. © 2024 Bentham Science Publishers.
Author Keywords deep learning; edge computing; IoT; machine learning; Smart cities; traffic classification


Similar Articles


Id Similarity Authors Title Published
22878 View0.933Anu Priya S.; Rajesh kanna B.; Beaulah Jeyavathana R.; Bhat N.; Rajalakshmi S.; Srimathi S.Employing A Deep Learning Technique To Categorize Internet Of Things (Iot) Traffic In A Smart City Context2023 IEEE International Conference on Research Methodologies in Knowledge Management, Artificial Intelligence and Telecommunication Engineering, RMKMATE 2023 (2023)
22879 View0.929Mahesh C.; Sumithra M.; Rao Ranga M.; Kumar K.R.; Suganthi D.; Karthiyayini S.Employing A Deep Learning Technique To Categorize Internet Of Things (Iot) Traffic In A Smart City ContextProceedings of the 2023 2nd International Conference on Augmented Intelligence and Sustainable Systems, ICAISS 2023 (2023)
31654 View0.912Negi S.K.; Sharma S.; Chandra P.K.Innovations To Enhance Traffic Prediction And Empowering Iov For Smart CitiesESIC 2025 - 5th International Conference on Emerging Systems and Intelligent Computing, Proceedings (2025)
33932 View0.905Hameed A.; Leivadeas A.Iot Traffic Multi-Classification Using Network And Statistical Features In A Smart EnvironmentIEEE International Workshop on Computer Aided Modeling and Design of Communication Links and Networks, CAMAD, 2020-September (2020)
35257 View0.902Ateya A.A.; Soliman N.F.; Alkanhel R.; Alhussan A.A.; Muthanna A.; Koucheryavy A.Lightweight Deep Learning-Based Model For Traffic Prediction In Fog-Enabled Dense Deployed Iot NetworksJournal of Electrical Engineering and Technology, 18, 3 (2023)
34097 View0.901Manswini Padhy K.; Chattopadhyay S.; Malik N.; Patra J.P.; Perada A.; Raghapriya N.R.Iot-Enabled Traffic Management Systems Using Cnn-Translstm For Next-Generation Smart Cities3rd International Conference on Integrated Circuits and Communication Systems, ICICACS 2025 (2025)
8075 View0.9Zheng G.; Chai W.K.; Katos V.An Ensemble Model For Short-Term Traffic Prediction In Smart City Transportation SystemProceedings - IEEE Global Communications Conference, GLOBECOM (2019)
1395 View0.898Tripathi A.N.; Sharma B.A Deep Review: Techniques, Findings And Limitations Of Traffic Flow Prediction Using Machine LearningLecture Notes in Mechanical Engineering (2023)
3390 View0.897Gupta B.B.; Chui K.T.; Gaurav A.; Arya V.; Chaurasia P.A Novel Hybrid Convolutional Neural Network- And Gated Recurrent Unit-Based Paradigm For Iot Network Traffic Attack Detection In Smart CitiesSensors (Basel, Switzerland), 23, 21 (2023)
7021 View0.891Qaffas A.A.Ai-Driven Distributed Iot Communication Architecture For Smart City Traffic OptimizationJournal of Supercomputing, 81, 8 (2025)