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Traffic-Aware Backscatter Communications in Wireless-Powered Heterogeneous Networks

机译:无线异构网络中的流量感知反向散射通信

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With the emerging Internet-of-Things (IoT) services, massive machine-to-machine (M2M) communication will be deployed on top of human-to-human (H2H) communication in the near future. Due to the coexistence of M2M and H2H communications, the performance of M2M (i.e., secondary) network depends largely on the H2H (i.e., primary) network. In this paper, we propose ambient backscatter communication for the M2M network which exploits the resources of the H2H network, referring to traffic applications and popularity. In order to maximize the harvesting and transmission opportunities offered by varying traffic resources of the H2H network, we adopt a Bayesian nonparametric (BNP) learning algorithm to classify traffic applications (patterns) for secondary user (SU). We then analyze the performance of SU using the stochastic geometrical approach, based on a criterion for optimum traffic pattern selection. Results are presented to validate the performance of the proposed BNP classification algorithm and the criterion.
机译:随着新兴的物联网(IoT)服务,在不久的将来,大规模的机器对机器(M2M)通信将部署在人对人(H2H)通信之上。由于M2M和H2H通信的共存,M2M(即辅助)网络的性能在很大程度上取决于H2H(即主要)网络。在本文中,我们针对M2M网络提出了环境背向散射通信,该通信利用了H2H网络的资源,并涉及到流量应用和普及程度。为了最大程度地利用H2H网络的各种流量资源提供的收获和传输机会,我们采用贝叶斯非参数(BNP)学习算法对次要用户(SU)的流量应用程序(模式)进行分类。然后,我们根据最佳交通模式选择的准则,使用随机几何方法分析SU的性能。结果被提出来验证所提出的BNP分类算法和标准的性能。

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