Self-Detecting Traffic Interference Control for Multi-Zone Services under 5G-Based Cellular Networks

Fecha

2021

Autores

Profesor Guía

Formato del documento

Articulo

ORCID Autor

Título de la revista

ISSN de la revista

Título del volumen

Editor

Sensors (Basel)

Ubicación

https://doi.org/10.3390/s21072409

ISBN

ISSN

1424-8220

item.page.issne

item.page.doiurl

Facultad

Departamento o Escuela

Determinador

Recolector

Especie

Nota general

Resumen

In this paper, we propose a multi-zone service control scheme to maximize the performance of each service zone when a large number of cellular service zones and Device-to-Device (D2D) service zones are composed into the 5G cellular network. This paper also improves performance of service zone by dividing traffic into real-time traffic and non-real-time traffic in order to minimize traffic interference. Real-time traffic and non-real-time traffic have a significant impact on communication performance. We propose a new self-detection traffic interference control technique to improve the Quality of Service (QoS) and throughput of D2D and Cellular-to-Device (C2D) communication in a cellular network, Self-detecting Traffic Interference Control Scheme (STICS). The proposed STICS mechanism distinguishes between short-term traffic congestion process and long-term traffic congestion process according to traffic characteristics to detect and control traffic. When the proposed scheme is applied to the 5G-based cellular network environment, it is expected that the traffic type will be efficiently classified by self-detecting the traffic according to the flow. Such classified traffic is less sensitive to communication between the D2D and C2D links, thereby reducing traffic overload. We evaluate the performance of the proposed scheme through simulation and show that the proposed scheme is more efficient than other comparison schemes.

Descripción

Lugar de Publicación

Auspiciador

Palabras clave

5G CELLULAR NETWORKS C2D COMMUNICATION D2D REAL-TIME TRAFFIC TRAFFIC INTERFERENCE

Licencia

URL Licencia

Colecciones