Spectrum Hole Identification in IEEE 802.22 WRAN using Unsupervised Learning

V. Balaji, S. Anand, C. Hota, G. Raghurama
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引用次数: 2

Abstract

In this paper we present a Cooperative Spectrum Sensing (CSS) algorithm for Cognitive Radios (CR) based on IEEE 802.22 Wireless Regional Area Network (WRAN) standard. The core objective is to improve cooperative sensing efficiency which specifies how fast a decision can be reached in each round of cooperation (iteration) to sense an appropriate number of channels/bands (i.e. 86 channels of 7MHz bandwidth as per IEEE 802.22) within a time constraint (channel sensing time). To meet this objective, we have developed CSS algorithm using unsupervised K-means clustering classification approach. The received energy level of each Secondary User (SU) is considered as the parameter for determining channel availability. The performance of proposed algorithm is quantified in terms of detection accuracy, training and classification delay time. Further, the detection accuracy of our proposed scheme meets the requirement of IEEE 802.22 WRAN with the target probability of falsealrm as 0.1. All the simulations are carried out using Matlab tool. Received on XXXX; accepted on XXXX; published on XXXX
基于无监督学习的IEEE 802.22 WRAN频谱空洞识别
提出了一种基于IEEE 802.22无线区域网络(WRAN)标准的认知无线电(CR)协同频谱感知(CSS)算法。核心目标是提高协作感知效率,即在时间限制(通道感知时间)内,在每轮合作(迭代)中能够以多快的速度达成决策,以感知适当数量的通道/频带(即根据IEEE 802.22, 7MHz带宽的86个通道)。为了实现这一目标,我们开发了使用无监督K-means聚类方法的CSS算法。每个辅助用户(Secondary User, SU)接收到的能量级别被视为确定信道可用性的参数。从检测精度、训练时间和分类延迟时间三个方面对算法的性能进行了量化。此外,我们提出的方案的检测精度满足IEEE 802.22无线局域网的要求,falsealrm的目标概率为0.1。所有的仿真都是使用Matlab工具进行的。XXXX年收到;XXXX日验收;发表于XXXX
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