AdapLoRa: Resource Adaptation for Maximizing Network Lifetime in LoRa networks

Weifeng Gao, Zhiwei Zhao, G. Min
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引用次数: 18

Abstract

LoRa has attracted much research attention due to its long communication range and low power consumption on end devices. In LoRa networks, the energy consumption on the end devices can be unfair, because some end devices have to use large spreading factors (leading to long transmission time) or large transmission power to reach a far-away gateway, and their energy consumption can be quite different. As a result, these end devices will run out of their batteries much faster, which may significantly reduce the network lifetime. The existing works have focused on the static resource allocation in LoRa networks to achieve energy fairness. However, due to the dynamic wireless environment, the static allocation can be inefficient in practice. In this paper, we develop AdapLoRa, a lifetime-aware dynamic network resource allocation system, to maximize the network lifetime of LoRa networks. AdapLoRa periodically adapts the resource allocation according to the link quality of end devices. A fine-grained network model is developed to capture the link quality variations and network interference. Finally, by considering the adaptation overhead (e.g., energy consumed by end devices to receive the configuration commands), we propose to gradually improve the network lifetime by periodically estimating network lifetime with different resource allocations. We implement AdapLoRa on a LoRa testbed, and the experimental results reveal that AdapLoRa improves the network lifetime by 23.7% compared with the state-of-the-art works.
AdapLoRa:在LoRa网络中实现最大网络生存期的资源自适应
LoRa以其通信距离远、终端设备功耗低等优点受到了广泛的关注。在LoRa网络中,终端设备的能耗可能不公平,因为有些终端设备需要使用较大的扩展因子(导致传输时间较长)或较大的传输功率才能到达较远的网关,两者的能耗可能相差很大。因此,这些终端设备将更快地耗尽电池,这可能会大大缩短网络寿命。现有的工作主要集中在LoRa网络中的静态资源分配,以实现能源公平。然而,由于无线环境的动态性,静态分配在实际应用中效率低下。为了最大限度地提高LoRa网络的生存期,我们开发了一种基于生命周期感知的动态网络资源分配系统AdapLoRa。AdapLoRa根据终端设备的链路质量,周期性地调整资源分配。建立了一个细粒度的网络模型来捕捉链路质量变化和网络干扰。最后,考虑到网络的适应开销(如终端设备接收配置命令所消耗的能量),提出了在不同资源分配情况下,通过定期估计网络生存期来逐步提高网络生存期的方法。我们在LoRa测试平台上实现了AdapLoRa,实验结果表明,AdapLoRa网络寿命比现有网络寿命提高了23.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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