神经模糊与单纯形优化模型在ATM网络拥塞控制中的比较分析。

S. Egoigwe, Stephen Sunday Okika, T. O. Araoye, Chukwudozie Chukwudi Michael, Nwobi Chukwudumebi Gibson
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引用次数: 0

摘要

拥塞总是随着传输速率的提高而增加,网络的数据处理能力也随之增加。拥塞通常发生在网络资源没有得到有效管理的情况下。因此,如果源的交付速度高于服务速率队列,则队列大小将更高。同样,如果队列大小是有限的,那么数据包将观察到延迟。利用MATLAB软件进行仿真,开发ATM网络拥塞控制优化方案,以减少Enugu ATM网络的拥塞。研究结果揭示了基于优化和神经模糊的Enugu ATM拥塞应用模型的最小化。结果表明,优化和神经模糊的拥塞控制模型分别为0.00003153和0.00002098。采用神经模糊控制器后,ATM拥塞率降低了0.0000105,降低了18.2%。结果表明,神经模糊模型可以有效地控制和最小化Enugu ATM网络中的ATM拥塞。结果表明,应用神经模糊算法可以使拥塞和数据包队列长度最小化。关键词:拥塞,MATLAB,优化,神经模糊,ATM DOI: 10.7176/CTI/10-05出版日期:2020年7月31日
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COMPARATIVE ANALYSIS OF NEURO- FUZZY AND SIMPLEX OPTIMIZATION MODEL FOR CONGESTION CONTROL IN ATM NETWORK.
Congestion always occurred when the transmission rate increased the data handling capacity of the network. Congestion normally arises when the network resources are not managed efficiently. Therefore if the source delivers at a speed higher then service rate queue, the queue size will be higher. Also if the queue size is finite, then the packet will observed delay . MATLAB Software was used to carry out simulations to develop Congestion control optimization Scheme for ATM Network with the aims to reducing the congestion of Enugu ATM Network. The results of the research reveal the minimization of congestion application model for Enugu ATM using optimization and Neuro-fuzzy. The result shows that congestion control model with Optimization and Neuro-fuzzy were 0.00003153 and 0.00002098 respectively. The ATM Congestion was reduced by 0.0000105, which is 18.2% decrease after Neuro-fuzzy controller was used. The results show the application of Neuro-fuzzy model which can use to control and minimized the ATM Congestion of Enugu ATM Network. The result shows that when Neuro-fuzzy is applied the congestion and the packet queue length in the buffer will be minimized. Key words: Congestion, MATLAB, Optimization, Neuro-fuzzy, ATM DOI: 10.7176/CTI/10-05 Publication date: July 31 st 2020
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