Hybrid Optimization With Deep Spiking Equilibrium Neural Network for Software Defined Network Based Congestion Prevention Routing

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
Sadanand R. Inamdar, L. Sadananda, D. Shyam Prasad
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引用次数: 0

Abstract

In the Internet of Things (IoT) network, within a period of time it constructs a huge network of millions and billions of things that incorporate with each other, leading to various technical and application problems. Also, on-time delivery of packets is significant in software-defined networks. In the current software-defined network, the bandwidth overhead is not considered when an enormous amount of traffic enters the network; this may lead to network congestion. To overcome this issue, a novel method is proposed to detect network congestion based on hybrid optimization, namely, the Hybrid Gannet with Pelican Optimization (HGPO) algorithm. The node-level congestions and the link-level congestions, which means the buffer overflow and the multiple nodes trying to utilize the channel at the same time, must be controlled efficiently. Once the network congestion gets controlled, the shortest route path selection and congestion prevention are performed perfectly with the aid of the proposed Deep Spiking Equilibrium Neural Network (DSENN). A few route discovery frequency vectors, such as the interroute discovery time and route discovery time of each node, are determined to prevent congestion. Finally, it is implemented in the Python platform successfully, and the achieved throughput, delay, packet loss ratio, packet delivery ratio, end-to-end delay, and performance measures of the proposed method are 140 Mbit/s, 17 ms, 3.8%, 0.35 s, and 100%, respectively, which outperforms the other compared traditional algorithms.

利用深度尖峰平衡神经网络进行混合优化,实现基于软件定义网络的拥塞预防路由选择
在物联网(IoT)网络中,数以百万计甚至数十亿计的事物会在一段时间内构建一个庞大的网络,这些事物会相互结合,从而导致各种技术和应用问题。此外,在软件定义网络中,数据包的按时交付也非常重要。在当前的软件定义网络中,当大量流量进入网络时,没有考虑带宽开销,这可能会导致网络拥塞。为解决这一问题,本文提出了一种基于混合优化的新型网络拥塞检测方法,即混合甘尼特与鹈鹕优化(HGPO)算法。节点级拥塞和链路级拥塞,即缓冲区溢出和多个节点同时试图使用信道,必须得到有效控制。一旦网络拥塞得到控制,借助所提出的深度尖峰均衡神经网络(DSENN),就能完美地完成最短路由路径选择和拥塞预防。为防止拥塞,还确定了一些路由发现频率向量,如每个节点的路由间发现时间和路由发现时间。最后,该方法在 Python 平台上成功实现,其吞吐量、延迟、丢包率、送包率、端到端延迟和性能指标分别为 140 Mbit/s、17 ms、3.8%、0.35 s 和 100%,优于其他传统算法。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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