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Modeling the Energy Performance of LoRaWAN.对LoRaWAN的能源性能进行建模。
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A Study of LoRa: Long Range & Low Power Networks for the Internet of Things.LoRa研究:用于物联网的远距离低功耗网络
Sensors (Basel). 2016 Sep 9;16(9):1466. doi: 10.3390/s16091466.

优化资源并提高物联网 (IoT) 网络的覆盖率:基于 LoRaWAN 的方法。

Optimizing Resources and Increasing the Coverage of Internet-of-Things (IoT) Networks: An Approach Based on LoRaWAN.

机构信息

Department of Electrical Engineering, Federal University of Espírito Santo, Av. Fernando Ferrari, 514, Vitoria 29075-910, ES, Brazil.

Sensors and Smart Systems Group, Institute of Engineering, Hanze University of Applied Sciences, 9747 AS Groningen, The Netherlands.

出版信息

Sensors (Basel). 2023 Jan 21;23(3):1239. doi: 10.3390/s23031239.

DOI:10.3390/s23031239
PMID:36772280
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9921952/
Abstract

A resource optimization methodology is proposed for application in long range wide area networks (LoRaWANs). Using variable neighborhood search (VNS) and a minimum-cost spanning tree algorithm, it reduces the implementation and the maintenance costs of such low power networks. Performance evaluations were conducted in LoRaWANs with LoRa repeaters to increase coverage, in scenario where the number and the location of the repeaters are determined by the VNS metaheuristic. Parameters such as spread factor (SF), bandwidth and transmission power were adjusted to minimize the network's total energy per useful bit (Ebit) and the total data collection time. The importance of the SF in the trade-off between (Ebit) and time on-air is evaluated, considering a device scaling factor. Simulation results, obtained after model adjustments with experimental data, show that, in networks with few associated devices, there is a preference for small values of SF aiming at reduction of Ebit. The usage of large SF's becomes relevant when reach extensions are required. The results also demonstrate that, for networks with high number of nodes, the scaling of devices over time become relevant in the fitness function, forcing an equal distribution of time slots per SF to avoid discrepancies in the time data collection.

摘要

提出了一种资源优化方法,用于长距离广域网(LoRaWAN)。使用变邻域搜索(VNS)和最小成本生成树算法,它降低了这种低功耗网络的实现和维护成本。在使用 LoRa 中继器增加覆盖范围的 LoRaWAN 中进行了性能评估,其中中继器的数量和位置由 VNS 元启发式确定。调整扩频因子(SF)、带宽和传输功率等参数,以最小化网络每有用位的总能量(Ebit)和总数据收集时间。考虑设备缩放因子,评估了 SF 在(Ebit)和空中时间之间的权衡中的重要性。在对模型进行了实验数据调整后的仿真结果表明,在与少量相关设备的网络中,为了降低 Ebit,倾向于选择较小的 SF 值。当需要扩展范围时,使用大 SF 变得很重要。结果还表明,对于具有大量节点的网络,随着时间的推移,设备的缩放在适应度函数中变得很重要,强制每个 SF 分配相等的时隙,以避免在数据收集时间上出现差异。