Cooperative Spectrum Sensing Optimization in Cognitive Radio networks based on a Hybrid (MFO-GDO) Heuristic Search Algorithm

Swati Thimmapuram, M. Laxmaiah, M. Sreelatha
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Abstract

Cognitive radio Network (CRN) is an intelligent technology and it periodically monitor unused licensed spectrum in a specific frequency band. The main issues with spectrum sensing in CRNs are the hidden terminal problem, which occurs during cognitive radio shading, severe multi-path faded or in buildings with high infiltration loss, while operating near a primary user (PU). Due to the hidden terminal problem, a cognitive radio (CR) can have failed to notice the PU's presence. Then access the unlicensed channel, cause interference in the license scheme, while this interference occurs in the system the probability errors will occurs in the network and reduces the spectrum utility. To overcome these issues, Quick Cooperative Spectrum Sensing (CSS) optimization framework in CRN (CSS-CRN) based on a May Fly optimization (MFO) and Gradient Descent Optimization (GDO) algorithm is proposed in this paper. Here, the weight vectors of CSS-CRN are optimized utilizing the hybrid heuristic Search based optimization algorithm namely May Fly optimization (MFO) and Gradient Descent Optimization (GDO) algorithm. Finally these weight vectors are used in the data fusion centre to assign spectrum in secondary users (SUs).
基于MFO-GDO混合启发式搜索算法的认知无线网络协同频谱感知优化
认知无线电网络(Cognitive radio Network, CRN)是一种智能技术,它定期监测特定频段内未使用的许可频谱。crn中频谱感知的主要问题是隐藏终端问题,当运行在主用户(PU)附近时,该问题发生在认知无线电遮蔽、严重的多径衰落或高入渗损失的建筑物中。由于隐藏的终端问题,认知无线电(CR)可能没有注意到PU的存在。然后进入未经许可的信道,在许可方案中造成干扰,而这种干扰在系统中发生时,会在网络中发生概率错误,降低频谱利用率。针对这些问题,本文提出了基于May Fly optimization (MFO)和Gradient Descent optimization (GDO)算法的CRN快速协同频谱感知(CSS)优化框架(CSS-CRN)。本文利用基于启发式搜索的混合优化算法,即May Fly optimization (MFO)和Gradient Descent optimization (GDO)算法,对CSS-CRN的权向量进行优化。最后,在数据融合中心使用这些权重向量对辅助用户进行频谱分配。
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