多准则对立学习蜻蜓资源优化QoS驱动信道选择crn

Ch.S.N. Sirisha Devi, Suman Maloj
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引用次数: 0

摘要

认知无线网络(crn)允许其用户在通信时获得足够的QoS。与CRN相关的主要问题与保证二级用户(su)的自由信道选择有关,以保持网络的吞吐量。文献中已经设计了许多用于crn信道选择的技术,但网络的吞吐量尚未得到提高。本文提出了一种多准则对立学习蜻蜓资源优化QoS驱动信道选择(MOLDRO-QoSDCS)技术,该技术可以根据期望的QoS指标选择最佳可用信道。molro - qosdcs技术旨在提高能源效率和吞吐量,同时减少传感时间。通过对向学习多目标蜻蜓优化,根据信噪比、功耗和频谱利用率选择最优可用信道。在优化过程中,初始化可用通道的填充。然后,利用多准则确定适应度函数,选择资源可用性最佳的可用信道。利用所选择的最优信道,有效地进行数据传输,以提高网络的吞吐量并最大限度地减少感知时间。为了验证该方案的性能,将Matlab仿真输出与传统算法进行了比较。molro - qosdcs技术在吞吐量、传感时间和能效方面优于其他方法。
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Multicriteria Oppositional-Learnt Dragonfly Resource-Optimized QoS Driven Channel Selection for CRNs
 Cognitive radio networks (CRNs) allow their users to achieve adequate QoS while communicating. The major concern related to CRN is linked to guaranteeing free channel selection to secondary users (SUs) in order to maintain the network’s throughput. Many techniques have been designed in the literature for channel selection in CRNs, but the throughput of the network has not been enhanced yet. Here, an efficient technique, known as multicriteria oppositional-learnt dragonfly resource-optimized QoS-driven channel selection (MOLDRO-QoSDCS) is proposed to select the best available channel with the expected QoS metrics. The MOLDRO-QoSDCS technique is designed to improve energy efficiency and throughput, simultaneously reducing the sensing time. By relying on oppositional-learnt multiobjective dragonfly optimization, the optimal available channel is selected depending on signal-to-noise ratio, power consumption, and spectrum utilization. In the optimization process, the population of the available channels is initialized. Then, using multiple criteria, the fitness function is determined and the available channel with the best resource availability is selected. Using the selected optimal channel, data transmission is effectively performed to increase the network’s throughput and to minimize the sensing time. The simulated outputs obtained with the use of Matlab are compared with conventional algorithms in order to verify the performance of the solution. The MOLDRO-QoSDCS technique performs better than other methods in terms of throughput, sensing time, and energy efficiency.
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来源期刊
Journal of Telecommunications and Information Technology
Journal of Telecommunications and Information Technology Engineering-Electrical and Electronic Engineering
CiteScore
1.20
自引率
0.00%
发文量
34
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