基于深度学习的多速率无线网络中满足qos的组播路由协议的数据传输速率选择

R. Suganya, V. David
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引用次数: 0

摘要

移动自组织网络(manet)可以传输多种数据速率以提高其服务质量(QoS)。但是,由于主机的通信范围不同,对主机进行准确的数据速率选择仍然不是很有效。为此,本文提出了一种基于速率的满足qos的多播路由协议(QSSM-ML),该协议引入深度学习来确定主机的数据传输速率。首先,将决定主机数据速率的问题表述为一个多类分类难题,并通过学习深度卷积神经网络(Deep Convolutional Neural Network, DCNN)解决。这个学习过程考虑的指标是传输帧的有效载荷长度、通信链路质量、吞吐量和其他网络指标在恒定的误报错误率(FER)下。通过学习这些指标,可以预测数据传输过程中主机的合适数据速率。仿真结果表明,与传统路由协议相比,QSSM-ML协议达到了71%的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Selection of Data Transfer Rate using Deep Learning for QoS-Satisfied Multicast Routing Protocol in Multirate MANETs
Mobile Adhoc Networks (MANETs) can transfer multiple data rates to enhance their Quality-of-Service (QoS). But, accurate data rate selection for hosts is still not effective since varying communication ranges of hosts. So, this article proposes a QoS-Satisfied Multicast with Multiple Learned (QSSM-ML) rate-based routing protocol which introduces deep learning to decide the data transfer rates for hosts. First, the problem of deciding the data rates for hosts is formulated as a multiclass categorization dilemma and solved by learning the Deep Convolutional Neural Network (DCNN). The metrics taken into account for this learning process are the payload length of transfer frames, communication link quality, throughput and other network metrics at constant False Error Rate (FER). By learning these metrics, the suitable data rates for hosts during data transfer are predicted. At last, the simulation outcomes exhibit that the QSSM-ML protocol achieves a 71% success ratio compared to the classical routing protocols.
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