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A Lightweight Software-Defined Routing Scheme for 5G URLLC in Bottleneck NetworksA Lightweight Software-Defined Routing Scheme for 5G URLLC in Bottleneck Networks

Other Titles
A Lightweight Software-Defined Routing Scheme for 5G URLLC in Bottleneck Networks
Authors
맛사담 프로힘김석훈
Issue Date
Apr-2022
Publisher
한국인터넷정보학회
Keywords
Machine learning (ML) algorithms have been intended to seamlessly collaborate for enabling intelligent networking in terms of massive service differentiation; prediction; and provides high-accuracy recommendation systems. Mobile edge computing (MEC) servers are located close to the edge networks to overcome the responsibility for massive requests from user devices and perform local service offloading. Moreover; there are required lightweight methods for handling real-time Internet of Things (IoT) communication perspectives; especially for ultra-reliable low-latency communication (URLLC) and optimal resource utilization. To overcome the abovementioned issues; this paper proposed an intelligent scheme for traffic steering based on the integration of MEC and lightweight ML; namely support vector machine (SVM) for effectively routing for lightweight and resource constraint networks. The scheme provides dynamic resource handling for the real-time IoT user systems based on the awareness of obvious network statues. The system evaluations were conducted by utillizing computer software simulations; and the proposed approach is remarkably outperformed the conventional schemes in terms of significant QoS metrics; including communication latency; reliability; and communication throughput.
Citation
인터넷정보학회논문지, v.23, no.2, pp 1 - 7
Pages
7
Journal Title
인터넷정보학회논문지
Volume
23
Number
2
Start Page
1
End Page
7
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/20728
ISSN
1598-0170
Abstract
Machine learning (ML) algorithms have been intended to seamlessly collaborate for enabling intelligent networking in terms of massive service differentiation, prediction, and provides high-accuracy recommendation systems. Mobile edge computing (MEC) servers are located close to the edge networks to overcome the responsibility for massive requests from user devices and perform local service offloading. Moreover, there are required lightweight methods for handling real-time Internet of Things (IoT) communication perspectives, especially for ultra-reliable low-latency communication (URLLC) and optimal resource utilization. To overcome the abovementioned issues, this paper proposed an intelligent scheme for traffic steering based on the integration of MEC and lightweight ML, namely support vector machine (SVM) for effectively routing for lightweight and resource constraint networks. The scheme provides dynamic resource handling for the real-time IoT user systems based on the awareness of obvious network statues. The system evaluations were conducted by utillizing computer software simulations, and the proposed approach is remarkably outperformed the conventional schemes in terms of significant QoS metrics, including communication latency, reliability, and communication throughput.
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College of Software Convergence (Department of Computer Software Engineering)
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