On Performance of IoT Devices Utilizing Energy Harvesting and Carrier Sensing in NOMA-HCN

A. Parihar, Pragya Swami, V. Bhatia
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Abstract

This work proposes a energy harvesting based non-orthogonal multiple access (NOMA) scheme in a heterogeneous cellular network (HCN) to support a ultra-dense network of devices. HCN comprises of macro-cell (MC) tier under-laid by small-cell (SC) tier. The distribution MCs follow the independent Poisson point process model, while the SC tier employs carrier sensing. Carrier sensing reduces interference by allowing only one base station to transmit. The analysis is carried out at SC which pairs two Internet-of- Things (IoT) devices for downlink NOMA transmission. IoT devices have diversified energy profiles and channel conditions which makes them suitable for NOMA pairing. Wireless energy harvesting and cooperative communication is employed at the devices to compensate for the energy and increasing coverage to IoT devices. Unlike previous works, the proposed method employs EH employing interference from SC and M C tiers rather than just the superimposed signal for EH. Expression of outage probability and system throughput are derived for the proposed NOMA transmission and comparisons are drawn with the HCN that do not employ carrier sensing.
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利用NOMA-HCN中能量收集和载波传感的物联网设备性能研究
本研究提出了一种在异构蜂窝网络(HCN)中基于能量收集的非正交多址(NOMA)方案,以支持超密集的设备网络。HCN由大细胞层(MC)和小细胞层(SC)组成。分布mc层采用独立泊松点过程模型,而SC层采用载波感知。载波传感通过只允许一个基站传输来减少干扰。该分析是在SC进行的,SC对两个物联网(IoT)设备进行下行NOMA传输。物联网设备具有多样化的能量分布和信道条件,使其适合NOMA配对。在设备上采用无线能量收集和协作通信来补偿能量并增加对物联网设备的覆盖。与以往的工作不同,本文提出的方法采用了利用SC和mc层干扰的EH,而不仅仅是EH的叠加信号。推导了所提出的NOMA传输的中断概率和系统吞吐量的表达式,并与不采用载波传感的HCN进行了比较。
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