A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network

When applying 5G network slicing technology, the operator’s network resources in the form of mutually isolated logical network slices provide specific service requirements and quality of service guarantees for smart grid communication services. In the face of the new situation of 5G, which comprises...

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Main Authors: Yang Hu, Liangliang Gong, Xinyang Li, Hui Li, Ruoxin Zhang, Rentao Gu
Format: Article
Language:English
Published: MDPI AG 2023-07-01
Series:Future Internet
Subjects:
Online Access:https://www.mdpi.com/1999-5903/15/7/247
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author Yang Hu
Liangliang Gong
Xinyang Li
Hui Li
Ruoxin Zhang
Rentao Gu
author_facet Yang Hu
Liangliang Gong
Xinyang Li
Hui Li
Ruoxin Zhang
Rentao Gu
author_sort Yang Hu
collection DOAJ
description When applying 5G network slicing technology, the operator’s network resources in the form of mutually isolated logical network slices provide specific service requirements and quality of service guarantees for smart grid communication services. In the face of the new situation of 5G, which comprises the surge in demand for smart grid communication services and service types, as well as the digital and intelligent development of communication networks, it is even more important to provide a self-intelligent resource allocation and carrying method when slicing resources are allocated. To this end, a carrying method based on a neural network is proposed. The objective is to establish a hierarchical scheduling system for smart grid communication services at the power smart gate-way at the edge, where intelligent classification matching of smart grid communication services to (i) adapt to the characteristics of 5G network slicing and (ii) dynamic prediction of traffic in the slicing network are both realized. This hierarchical scheduling system extracts the data features of the services and encodes the data through a one-dimensional Convolutional Neural Network (1D CNN) in order to achieve intelligent classification and matching of smart grid communication services. This system also combines with Bidirectional Long Short-Term Memory Neural Network (BILSTM) in order to achieve a dynamic prediction of time-series based traffic in the slicing network. The simulation results validate the feasibility of a service classification model based on a 1D CNN and a traffic prediction model based on BILSTM for smart grid communication services.
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spelling doaj.art-51a8826d9e3a436384e8ad17203054e92023-11-18T19:27:01ZengMDPI AGFuture Internet1999-59032023-07-0115724710.3390/fi15070247A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural NetworkYang Hu0Liangliang Gong1Xinyang Li2Hui Li3Ruoxin Zhang4Rentao Gu5State Grid Electric Power Research Institute, Nanjing 211106, ChinaState Grid Electric Power Research Institute, Nanjing 211106, ChinaBeijing Laboratory of Advanced Information Networks, Beijing University of Posts and Telecommunications, Beijing 100876, ChinaBeijing Laboratory of Advanced Information Networks, Beijing University of Posts and Telecommunications, Beijing 100876, ChinaSchool of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing 100876, ChinaBeijing Laboratory of Advanced Information Networks, Beijing University of Posts and Telecommunications, Beijing 100876, ChinaWhen applying 5G network slicing technology, the operator’s network resources in the form of mutually isolated logical network slices provide specific service requirements and quality of service guarantees for smart grid communication services. In the face of the new situation of 5G, which comprises the surge in demand for smart grid communication services and service types, as well as the digital and intelligent development of communication networks, it is even more important to provide a self-intelligent resource allocation and carrying method when slicing resources are allocated. To this end, a carrying method based on a neural network is proposed. The objective is to establish a hierarchical scheduling system for smart grid communication services at the power smart gate-way at the edge, where intelligent classification matching of smart grid communication services to (i) adapt to the characteristics of 5G network slicing and (ii) dynamic prediction of traffic in the slicing network are both realized. This hierarchical scheduling system extracts the data features of the services and encodes the data through a one-dimensional Convolutional Neural Network (1D CNN) in order to achieve intelligent classification and matching of smart grid communication services. This system also combines with Bidirectional Long Short-Term Memory Neural Network (BILSTM) in order to achieve a dynamic prediction of time-series based traffic in the slicing network. The simulation results validate the feasibility of a service classification model based on a 1D CNN and a traffic prediction model based on BILSTM for smart grid communication services.https://www.mdpi.com/1999-5903/15/7/247CNNBILSTMnetwork slicingedge networksmart gridservice classification
spellingShingle Yang Hu
Liangliang Gong
Xinyang Li
Hui Li
Ruoxin Zhang
Rentao Gu
A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
Future Internet
CNN
BILSTM
network slicing
edge network
smart grid
service classification
title A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
title_full A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
title_fullStr A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
title_full_unstemmed A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
title_short A Carrying Method for 5G Network Slicing in Smart Grid Communication Services Based on Neural Network
title_sort carrying method for 5g network slicing in smart grid communication services based on neural network
topic CNN
BILSTM
network slicing
edge network
smart grid
service classification
url https://www.mdpi.com/1999-5903/15/7/247
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