基于频谱感知的认知无线网络导频污染分析中的能量感知信道分配

R. Joshi, Arvind Kumar Pandey, Aarju, Arjun Singh, Pooran Singh, R. Chandramma
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引用次数: 1

摘要

认知无线电(CR)是一项创新的现代技术,通过提高移动蜂窝带宽连接的使用,努力克服带宽减少的问题。信道的重新分配和分配是蜂窝移动网络(CMN)利用CMS消耗的一个基本特征。同时,吞吐量最大化可能导致更高的功率利用率,频谱传感系统必须解决能量吞吐量的权衡问题。频谱感知时间应由二次用户(SU)的电池剩余能量来定义。在此背景下,需要开发能量有效的频谱感知算法,以满足CRN的能量约束。本研究设计了一种新的基于量子粒子群优化的能量感知频谱感知方案(QPSO-EASSS)。本文提出的QPSO-EASSS技术根据单元的电池能级动态估计传感时间,并根据单元的电池能级和PU信号计算传输功率。此外,在本工作中,QPSO- eass技术将QPSO算法应用于CRN中具有能量约束的吞吐量最大化。进行了一组详细的实验,并报告了与现有模型相比qpso - eass技术的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Aware Channel Allocation with Spectrum Sensing in Pilot Contamination Analysis for Cognitive Radio Networks
Cognitive radio (CR) is an innovative and contemporary technology that has been making an effort to overcome the problems of bandwidth reduction by rising the usage of mobile cellular bandwidth connections. The reallocation and distribution of channels is a fundamental characteristic of cellular mobile networks (CMN) to exploit the consumption of CMS. Meanwhile, throughput maximization might lead to higher power utilization, the spectrum sensing system must tackle the energy throughput tradeoff. The spectrum sensing time should be defined by the residual battery energy of secondary user (SU). In that context, energy effective algorithm for spectrum sensing should be developed for meeting the energy constraint of CRN. This study designs a new quantum particle swarm optimization-based energy aware spectrum sensing scheme (QPSO-EASSS) for CRNs. Here, the presented QPSO-EASSS technique dynamically estimates the sensing time depending upon the battery energy level of SUs and the transmission power can be computed based on the battery energy level and PU signal of the SUs. In addition, in this work, the QPSO-EASSS technique applies the QPSO algorithm for throughput maximization with energy constraints in the CRN. The detailed set of experimentations take place and reported the improvements of the QPSO-EASSS technique compared to existing models.
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