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窄带物联网设备到设备仿真:一个开源框架。

Narrowband-Internet of Things Device-to-Device Simulation: An Open-Sourced Framework.

机构信息

Department of Engineering, King's College London, London WC2R 2LS, UK.

出版信息

Sensors (Basel). 2021 Mar 5;21(5):1824. doi: 10.3390/s21051824.

DOI:10.3390/s21051824
PMID:33807859
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7961383/
Abstract

Narrowband-Internet of Things (NB-IoT) displays high-quality connectivity underpinned by fifth-generation (5G) networks to cover a wide array of IoT applications. The devices' development and integration into different smart systems require permanent control, supervision, and the study of power consumption models to determine the performance of the network topology and allow for the measurement of the efficiency of the network topology's application. This paper reports on an architecture and open-sourced simulation that was developed to study NB-IoT in Device-to-Device (D2D) mode, which includes the Physical (PHY), network, and application layers, as well as a queuing model, the model for uplink and downlink delays, the throughput, the overall NB-IoT D2D network performance, and the energy consumption based on the Low Energy Adaptive Clustering Hierarchy (LEACH) protocol. Our results prove that the suggested framework contributes to a reduction in power consumption, a minimization of queuing delays, a decrease in communication cost, a reduction in inter-cluster collisions, and the prevention of attacks from malicious nodes. Consequently, the framework manages the battery's State of Charge (SOC), improves the battery's State of Health (SOH), and maximizes the whole network lifetime. The proposed framework, the code of which has been open-sourced, can be effectively used for scientific research and development purposes to evaluate different parameters and improve the planning of NB-IoT networks.

摘要

窄带物联网 (NB-IoT) 利用第五代 (5G) 网络提供高质量的连接,覆盖广泛的物联网应用。设备的开发和集成到不同的智能系统中需要进行持续的控制、监督和功耗模型研究,以确定网络拓扑的性能,并衡量网络拓扑应用的效率。本文报告了一种架构和开源模拟,用于研究 D2D 模式下的 NB-IoT,包括物理 (PHY)、网络和应用层,以及排队模型、上行和下行延迟模型、吞吐量、整体 NB-IoT D2D 网络性能以及基于低功耗自适应聚类层次结构 (LEACH) 协议的能耗。我们的结果证明,所提出的框架有助于降低功耗、最小化排队延迟、降低通信成本、减少簇间碰撞以及防止来自恶意节点的攻击。因此,该框架可以管理电池的荷电状态 (SOC),提高电池的健康状态 (SOH),并最大限度地延长整个网络的寿命。所提出的框架,其代码已开源,可有效地用于科学研究和开发目的,以评估不同的参数并改进 NB-IoT 网络的规划。

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