协同动态频谱接入中基于点过程的主用户定位

B. Sayraç, L. Gueguen, Chung Cong Trang, Ana Galindo-Serrano
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引用次数: 1

摘要

本文提出了一种统计估计框架,利用动态频谱接入(DSA)网络中协同频谱感知环境下频谱使用的空间特征来估计主用户(PU)发射机位置。首先,通过假设一个传播模型和已知的PU发射机位置,构建了协作辅助用户接收功率的统计似然模型。本文的附加值在于对该似然模型进行了改进,从点过程理论中引入了PU发射机位置的空间密度和点相互作用的先验信息。在统计优化框架中使用所得模型来找到PU发射机数量及其位置的最大似然(ML)和最大后验(MAP)估计。由于ML估计和MAP估计不接受可处理的闭形式解析公式,我们提出用数值Nelder-Mead算法来解决优化问题。为了评估性能,产生的随机场以干涉图的形式考虑。分析了协同单元数量、阴影标准差和单元数量与PU发射机数量之比对估计质量的影响。
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Point-process based localization of primary users in collaborative dynamic spectrum access
In this paper, we propose a statistical estimation framework to estimate Primary User (PU) transmitter locations by using the spatial characterization of spectrum usage in a collaborative spectrum sensing context in Dynamic Spectrum Access (DSA) networks. First, a statistical likelihood model of the received power by collaborating Secondary Users (SUs) is constructed by assuming a propagation model and known PU transmitter locations. The added value of the paper is the improvement of this likelihood model by adding the a priori information on the PU transmitter locations in the form of spatial densities and point interactions taken from the theory of point processes. The resulting models are used in a statistical optimization framework to find the Maximum Likelihood (ML) and Maximum A Posteriori (MAP) estimates of the number of PU transmitters and their locations. Since the ML and the MAP estimations do not accept tractable closed-form analytical formulations, we propose to solve the optimization problems by the numerical Nelder-Mead algorithm. To assess the performance, the resulting random field is considered in the form of an interference map. The effects of the number of collaborating SUs, the shadowing standard deviation and the ratio of the number of SUs to the number of PU transmitters on the estimation quality are also evaluated.
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