一种改进的智能家庭网络跨层调度模型

K’Obwanga M. Kevin, Okuthe P. Kogeda, M. Lall
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引用次数: 3

摘要

我们每天都在向现有的智能家庭网络中添加更多的设备和服务。因此,世界各地正在经历的各种网络标准演变并没有把家庭网络抛在后面。这些进化导致了竞争和可用有限资源的枯竭。因此,消费者在本地和远程都体验到不可用、不可靠和性能差的网络。在本文中,我们提出了一种改进的跨层调度(CLS)模型来优化智能家庭网络的性能。我们使用粒子游优化(PSO)算法对模型中的网络子网、设备和服务进行动态调度、对齐和优先级排序。我们使用虚拟局域网(VLAN)协议将家庭网络划分为六个子网。因此,我们使用加权因子数对子网设备进行分类。此外,我们使用差异化服务代码点(DSCP)将支持的家庭网络服务分为六类。此外,我们迭代地增加了每个服务类别(CoS)传输的数据包数量。我们对每个子网进行了优化,并将前一个子网的输出作为后一个子网的输入。同样,我们减少了媒体中连续传输损耗之间的延迟。仿真结果表明,该模型的平均网络吞吐率为99.735%,丢包率为1.59%,时延为1.82毫秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved-Cross Layer Scheduling model for intelligent home networks
We daily add more devices and services into existing intelligent home networks. Consequently, various networking standards evolutions being experienced world over have not left home networks behind. These evolutions results in competition and depletion of the available limited resources. Consumers therefore, experience unavailable, unreliable and poor performing network both locally and remotely. In this paper, we present an Improved-Cross Layer Scheduling (CLS) model that optimizes performance of intelligent home networks. We have used Particle Swam Optimization (PSO) algorithm to dynamically schedule, align and prioritize network subnets, devices and services in the model. We have used Virtual Local Area Network (VLAN) protocol to classify home network into six subnets. Consequently, we have used weighing factor numbers to classify subnet devices. Further, we have used Differentiated Service Code Points (DSCP) to classify supported home network services into six classes. Moreover, we have increased number of packets transmitted per Class of Service (CoS) iteratively. We have optimized each subnet and used the output of the preceding subnet as input to subsequent subnet. Equally, we have reduced delay between consecutive transmitting CoSs in the media. We have simulated our model and realized average network throughput of 99.735%, packet loss of 1.59% and delay of 1.82 milliseconds.
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