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光网络的新型分类研究
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作者 宋艳萍 郑玉甫 +1 位作者 马素芬 王峰 《信息通信》 2008年第1期33-35,共3页
介绍光通信技术的发展,给出几种光器件的基本原理,在通用网络分类的基础上,提出了光网络的一种新型的分类方法,具体包括:光链路网络,广播—选择网络,波长路由(WR)网络,光子分组交换网络和光突发交换网络。
关键词 器件 光网络分类 交换
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Achievement of Interference Alignment in General Underlay Cognitive Radio Networks: Scenario Classification and Adaptive Spectrum Sharing 被引量:1
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作者 Mei Rong 《China Communications》 SCIE CSCD 2018年第6期98-108,共11页
Interference alignment(IA) is suitable for cognitive radio networks(CRNs).However, in IA spectrum sharing(SS) process of general underlay CRNs, transmit power of cognitive radio transmitters usually should be reduced ... Interference alignment(IA) is suitable for cognitive radio networks(CRNs).However, in IA spectrum sharing(SS) process of general underlay CRNs, transmit power of cognitive radio transmitters usually should be reduced to satisfy interference constraint of primary user(PU), which may lead to low signalto-noise-ratio at cognitive radio receivers(CRRs). Consequently, sum rate of cognitive users(CUs) may fall short of the theoretical maximum through IA. To solve this problem,we propose an adaptive IA SS method for general distributed multi-user multi-antenna CRNs. The relationship between interference and noise power at each CRR is analyzed according to channel state information, interference requirement of PU, and power budget of CUs. Based on the analysis, scenarios of the CRN are classified into 4 cases, and corresponding IA SS algorithms are properly designed. Transmit power adjustment, CU access control and adjusted spatial projection are used to realize IA among CUs. Compared with existing methods, the proposed method is more general because of breaking the restriction that CUs can only transmit on the idle sub-channels. Moreover, in comparison to other five IA SS methods applicable in general CRN, the proposed method leads to improved achievable sum rate of CUs while guarantees transmission of PU. 展开更多
关键词 cognitive radio networks spectrum sharing interference alignment scenario classification
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