基于移动性的自适应物联网 LoRa 集群通信方案

Dick Mugerwa, Youngju Nam, Hyunseok Choi, Yongje Shin, Euisin Lee
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摘要

长距离(LoRa)作为一种低功耗广域技术,以其专为物联网(IoT)网络量身定制的强大长距离通信功能而与众不同。由于 LoRa 主要是为固定设备设计的,因此在应用于移动设备时,它们很容易频繁受到信道衰减的影响。这种情况会导致数据包丢失、能耗增加和传输时间延长。为了应对移动性带来的这些固有挑战,我们提出了一种基于移动性的自适应物联网 LoRa 集群通信(AMILCC)方案,该方案采用二维随机航点移动模型,将网络战略性地划分为最佳传播因子(SF)区域,并采用自适应集群方法。混合自适应数据速率(HADR)机制将 AMILCC 方案分为两种方法,即 SF 内和 SF 间区域 HADR,该机制源自基于网络的固定设备标准 ADR 机制,以确保为移动 IoT LoRa 设备高效分配资源。评估结果表明,基于最高 5 m/s 的低移动速度下的模拟,AMILCC 成功地最大化了到网关 (GW) 的数据包成功率超过 70%,平均降低了 55.5% 的能耗,并最大限度地减少了 47.62% 的端到端延迟,表现优于固定方案。因此,AMILCC 兼顾了高数据包成功率(PSR)、可靠性和能效,是移动物联网 LoRa 网络的最佳解决方案。
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Adaptive Mobility-Based IoT LoRa Clustering Communication Scheme
Long Range (LoRa) as a low-power wide-area technology is distinguished by its robust long-distance communications tailored for Internet of Things (IoT) networks. Because LoRa was primarily designed for stationary devices, when applied to mobile devices, they become susceptible to frequent channel attenuation. Such a condition can result in packet loss, higher energy consumption, and extended transmission times. To address these inherent challenges posed by mobility, we propose an adaptive mobility-based IoT LoRa clustering communication (AMILCC) scheme, which employs the 2D random waypoint mobility model, strategically partitions the network into optimal spreading factor (SF) regions, and incorporates an adaptive clustering approach. The AMILCC scheme is bolstered by a hybrid adaptive data rate (HADR) mechanism categorized into two approaches, namely intra-SF and inter-SF region HADRs, derived from the standard network-based ADR mechanism for stationary devices, to ensure efficient resource allocation for mobile IoT LoRa devices. Evaluation results show that, based on simulations at low mobility speeds of up to 5 m/s, AMILCC successfully maximizes the packet success ratio to the gateway (GW) by over 70%, reduces energy consumption by an average of 55.5%, and minimizes the end-to-end delay by 47.62%, outperforming stationary schemes. Consequently, AMILCC stands as a prime solution for mobile IoT LoRa networks by balancing the high packet success ratio (PSR) with reliability with energy efficiency.
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