基于底层认知无线网络干扰温度的信道建模

Manuj Sharma, A. Sahoo, K. Nayak
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引用次数: 44

摘要

基于认知无线电的动态频谱接入网是解决频谱短缺问题的一种新技术。在本研究中,我们假设该频道被许可给某个主要(许可)运营商。我们考虑了一个具有认知无线电能力的传感器网络,它作为二级(未经许可的)网络,并在底层模式下使用信道。辅助网络使用干扰温度模型来确保对主设备的干扰保持在预定义的阈值以下。我们使用隐马尔可夫模型(HMM)来模拟主信道的干扰温度动态。HMM采用鲍姆-韦尔奇程序进行训练。训练后的HMM在统计上是稳定的。辅助节点使用该训练好的HMM来预测信道在未来时隙中的干扰温度,并计算信道的信道可用性度量(CAM)值。辅助节点使用CAM来选择传输的主通道。给出了训练后的hmm在多信道无线网络信道选择中的应用结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel modeling based on interference temperature in underlay cognitive wireless networks
Cognitive radio based dynamic spectrum access network is emerging as a technology to address spectrum scarcity. In this study, we assume that the channel is licensed to some primary (licensed) operator. We consider a sensor network with cognitive radio capability that acts as a secondary (unlicensed) network and uses the channel in underlay mode. The secondary network uses interference temperature model to ensure that the interference to the primary devices remain below a predefined threshold. We use hidden Markov model (HMM) to model the interference temperature dynamics of a primary channel. The HMM is trained using Baum-Welch procedure. The trained HMM is shown to be statistically stable. Secondary nodes use this trained HMM to predict the interference temperature of the channel in future time slots and computes the value of channel availability metric (CAM) for the channel. CAM is used by secondary nodes to select a primary channel for transmission. Results of application of such trained HMMs in channel selection in multi-channel wireless network are presented.
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