Smart City Gnosys

Smart city article details

Title Energy Efficient Resource Management In Fog Computing Supported Medical Cyber-Physical System
ID_Doc 23260
Authors Apat H.K.; Bhaisare K.; Sahoo B.; Maiti P.
Year 2020
Published 2020 International Conference on Computer Science, Engineering and Applications, ICCSEA 2020
DOI http://dx.doi.org/10.1109/ICCSEA49143.2020.9132855
Abstract The sufficient resources in the cloud data center allow plenties of the Internet of Things(IoT) application that has to be deployed on the server to provide services for different industries. However the major drawbacks faced nowadays is the centralized nature of computing framework for processing latency sensitive application especially health monitoring, processing medical data generated from the sensor devices attached in the body of the patients. The major drawback being faced in these cloud frameworks is their limited scalability and hence incapable to cater the requirements of the centralized IoT based environment. Fog computing architecture is considered as a promising solution that extends the feature of existing Cloud Computing and brings the resources close to the IoT devices which meets the requirements imposed by the devices in the network of IoT. The main issue of fog computing is the distribution of resources. As fog computing is still in the infancy stage there is no such Service Level Agreement(SLA) defined. In fog computing resource management is an important issue if efficiently managed then we can enhance the performance of the system up to a large extent. In this paper we are considering smart health care which is now a trend for smart city people used to get access health-care from the home, so we have proposed to design an architecture for efficient health-care by using fog computing which is collaboration with cloud. Service placement is considered as an important problem for designing such architecture to process the latency based application that can provide innovative solutions by bringing resources closer to the user and provide low latency and energy-efficient solutions for data processing compared to cloud. We have employed to form a fog cluster based on the hop count and place the services within that cluster so that node to node latency get minimized and network cost is minimized for users perspective, we also minimize the network utilization so that load on the network devices is balanced. In this work, we have discussed service placement problems in fog computing environments for a specific use case of health monitoring over a large geographical area. A new Dynamic Cluster Algorithm has been proposed and compare with existing two other Algorithm named as latency aware and resource aware.The result shown that our algorithm performs better than other two Algorithms. © 2020 IEEE.
Author Keywords Energy consumption Optimization; Fog computing; Internet of Things(IoT); Network Resource Optimization; Response Time; Task Placement


Similar Articles


Id Similarity Authors Title Published
19439 View0.899Borujeni A.M.; Fathy M.; Mozayani N.Developing And Evaluating A Real Time And Energy Efficient Architecture For An Internet Of Health ThingsProceeding of 4th International Conference on Smart Cities, Internet of Things and Applications, SCIoT 2020 (2020)
38306 View0.892Goel G.; Chaturvedi A.K.Multi-Objective Load-Balancing Strategy For Fog-Driven Patient-Centric Smart Healthcare System In A Smart CityEngineering, Technology and Applied Science Research, 14, 4 (2024)
60736 View0.89Ljubimova E.; Yumashev A.; Sergin A.; Prasad B.; Lydia E.L.Utilizing Fog Computing To Secure Smart Health Care Monitoring (Shm) In Smart CitiesLecture Notes in Networks and Systems, 1057 LNNS (2024)
15298 View0.887Praveen Kumar A.; Reddy C.Comprehensive Analysis On Low Power Health Monitoring System Using Fog Computing In Passive Optical Networks6th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud), I-SMAC 2022 - Proceedings (2022)
26780 View0.886Apat H.K.; Goswami V.; Sahoo B.; Barik R.K.; Saikia M.J.Fog Service Placement Optimization: A Survey Of State-Of-The-Art Strategies And TechniquesComputers, 14, 3 (2025)
26784 View0.881Gupta D.; Bansal A.; Wadhwa S.; Garg K.D.Fog-Based Smart Healthcare Architecture In Iot EnvironmentLecture Notes in Electrical Engineering, 1040 LNEE (2023)
3329 View0.879Tripathy S.S.; Imoize A.L.; Rath M.; Tripathy N.; Bebortta S.; Lee C.-C.; Chen T.-Y.; Ojo S.; Isabona J.; Pani S.K.A Novel Edge-Computing-Based Framework For An Intelligent Smart Healthcare System In Smart CitiesSustainability (Switzerland), 15, 1 (2023)
9763 View0.876Mahmud R.; Ramamohanarao K.; Buyya R.Application Management In Fog Computing Environments: A Taxonomy, Review And Future DirectionsACM Computing Surveys, 53, 4 (2021)
3430 View0.876Alatoun K.; Matrouk K.; Mohammed M.A.; Nedoma J.; Martinek R.; Zmij P.A Novel Low-Latency And Energy-Efficient Task Scheduling Framework For Internet Of Medical Things In An Edge Fog Cloud SystemSensors, 22, 14 (2022)
1722 View0.876Singh P.; Kaur R.; Rashid J.; Juneja S.; Dhiman G.; Kim J.; Ouaissa M.A Fog-Cluster Based Load-Balancing TechniqueSustainability (Switzerland), 14, 13 (2022)