Abstract

Nowadays, 5G network infrastructures are being developed for various industrial IoT (Internet of Things) applications worldwide, emerging with the IoT. As such, it is possible to deploy power-optimized technology in a way that promotes the long-term sustainability of networks. Network slicing is a fundamental technology that is implemented to handle load balancing issues within a multi-tenant network system. Separate network slices are formed to process applications having different requirements, such as low latency, high reliability, and high spectral efficiency. Modern IoT applications have dynamic needs, and various systems prioritize assorted types of network resources accordingly. In this paper, we present a new framework for the optimum performance of device applications with optimized network slice resources. Specifically, we propose a Machine Learning-based Network Sub-slicing Framework in a Sustainable 5G Environment in order to optimize network load balancing problems, where each logical slice is divided into a virtualized sub-slice of resources. Each sub-slice provides the application system with different prioritized resources as necessary. One sub-slice focuses on spectral efficiency, whereas the other focuses on providing low latency with reduced power consumption. We identify different connected device application requirements through feature selection using the Support Vector Machine (SVM) algorithm. The K-means algorithm is used to create clusters of sub-slices for the similar grouping of types of application services such as application-based, platform-based, and infrastructure-based services. Latency, load balancing, heterogeneity, and power efficiency are the four primary key considerations for the proposed framework. We evaluate and present a comparative analysis of the proposed framework, which outperforms existing studies based on experimental evaluation.

Highlights

  • Communication has become an essential part of our daily lives in a sustainable society. 5G has emerged as a key technology in enabling a wide range of sustainable development goals, from good health to energy efficiency, and access to a sustainable environment

  • We introduce the concept of network sub-slicing in the 5G-enabled IoT with the help of machine learning technology using a novel Machine Learning-based Network Sub-slicing Framework in a sustainable 5G environment

  • We present the evaluation of the performance of our proposed Machine Learning-based Network sub-slicing Framework in the sustainable 5G environment in order to provide efficient services to smart applications

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Summary

Introduction

Communication has become an essential part of our daily lives in a sustainable society. 5G has emerged as a key technology in enabling a wide range of sustainable development goals, from good health to energy efficiency, and access to a sustainable environment. 5G networks enable humans to interconnect with machines, objects, and IoT (Internet of Things) devices. The potent combination of 5G, artificial intelligence, smart platforms, and IoT will change the world, offering intelligent, sustainable connectivity to diverse services as applications, platforms, and infrastructures. The objective of the 5G network infrastructure is to provide opportunities to generate new services and new business strategies for entering communication networks [1]. 5G network connectivity offers the ability to enhance these applications and enables new ones—such as automotive transportation and agriculture—with machine learning. These applications generate massive amounts of data in the cloud network. According to a report released by Gartner [2], an end-to-end sustainable 5G infrastructure will be converted by 2025 to 2030 and deployed in most IoT and Artificial Intelligence (AI) applications

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