Smart City Gnosys

Smart city article details

Title A Fuzzy Logic Based Offloading System For Distributed Deep Learning In Wireless Sensor Networks
ID_Doc 1861
Authors Zenasni N.; Habib C.; Nassar J.
Year 2022
Published Proceedings of the International Joint Conference on Neural Networks, 2022-July
DOI http://dx.doi.org/10.1109/IJCNN55064.2022.9892817
Abstract In recent years, wireless sensor networks have been deployed on a large scale. Their ability to capture information and transmit it has made them key players in the smart city and industry. Most often, data streamed from sensor nodes are collected in a centralized cloud to form a vector of features. They are then used to make future predictions using advanced machine learning (ML) techniques such as Deep Learning (DL). Due to the increasing volumes of data being collected and transmitted over the network, this approach turns out to have a high communication cost, which wastes energy and often saturates the network. In this work, we study an alternative approach that enables collaborative inference throughout the network devices (edge, fog and cloud). Our proposition consists of a fuzzy logic controller which will decide at what level of the network (edge, fog or cloud) the inference should be carried out. Three parameters are taken into account to make this decision: the available energy level of the edge device (smart node), the available network bandwidth and the amount of available data for inference. This work presents preliminary results achieved with the proposed approach using generated configuration input data. We show that the implementation of our controller on edge devices (smart nodes) that run RNN-LSTM for multivariate time series predictions can reduce their energetic cost by around 50%. © 2022 IEEE.
Author Keywords Collaborative inference; Deep learning; Edge computing; Fuzzy logic; Multivariate time series data; Recurrent neural networks; Wireless sensor networks


Similar Articles


Id Similarity Authors Title Published
44397 View0.868Swaminathan S.; Poongavanam N.; Arun M.; Pushparani S.; Muthukrishnan A.; Johri P.Real-Time Monitoring And Control Systems Using Iot-Integrated Wireless Sensor Networks-Leveraging Machine Learning Algorithms For Enhanced Performance And Efficiency2024 International Conference on Cybernation and Computation, CYBERCOM 2024 (2024)
12088 View0.864Balicki, J; Balicka, H; Dryja, PBig Data From Sensor Network Via Internet Of Things To Edge Deep Learning For Smart CityCOMPUTER INFORMATION SYSTEMS AND INDUSTRIAL MANAGEMENT, CISIM 2021, 12883 (2021)
1511 View0.863Gali M.; Mahamkali A.A Distributed Deep Meta Learning Based Task Offloading Framework For Smart City Internet Of Things With Edge-Cloud ComputingJournal of Internet Services and Information Security, 12, 4 (2022)
36474 View0.855Ali T.; Sharma A.; Sharma V.; Kaloria S.; Raj A.; Alaria S.K.Matheamatical Modeling Of Multi-Objective Adaptive Neuro Fuzzy Inference Based Optimization For Iot Based Wireless Sensor NetworkPanamerican Mathematical Journal, 35, 1S (2025)
20677 View0.852Jeevanantham S.; Venkatesan C.; Rebekka B.Distributed Neuro-Fuzzy Routing For Energy-Efficient Iot Smart City Applications In WsnTelecommunication Systems, 87, 2 (2024)
23348 View0.851Puttaswamy N.G.; Murthy A.N.Energy Optimization In Smart Networks Using Machine Learning-Driven Fog Computing To Reduce Unnecessary Cloud Data TransmissionEngineering, Technology and Applied Science Research, 15, 3 (2025)